Systems and methods for a television scoring service that learns to reach a target audience

Information

  • Patent Grant
  • 12069346
  • Patent Number
    12,069,346
  • Date Filed
    Thursday, September 1, 2022
    2 years ago
  • Date Issued
    Tuesday, August 20, 2024
    3 months ago
Abstract
Television is the largest advertising category in the United States with over 65 billion spent by advertisers per year. A variety of different targeting algorithms are compared, ranging from the traditional age-gender targeting methods employed based on Nielsen ratings, to new approaches that attempt to target high probability buyers using Set Top Box data. The performance of these different algorithms on a real television campaign is shown, and the advantages and limitations of each method are discussed. In contrast to other theoretical work, all methods presented herein are compatible with targeting the existing 115 million Television households in the United States and are implementable on current television delivery systems.
Description
TECHNICAL FIELD

The present disclosure relates to systems and methods for evaluating television media instances for advertisement spots based on various factors for reaching television viewers who are desired product buyers.


BACKGROUND

Television is the largest advertising medium in the United States, with over 65 billion dollars in advertising revenue in 2011. According to Nielsen, approximately 20 times more hours are spent viewing TV as compared to viewings on either the Internet or mobile video. In 2013, there were about twice as many original programs on TV as compared to 2005, and over 60% of viewers were using High Definition (“HD”) TVs.


If there is an area for improvement in TV, it is around how advertising can be effective and targeted to viewers. TV advertising is unlike online advertising because it has traditionally been a broadcast medium, i.e., a one way transmission of TV programs to the viewer with no direct feedback. In online advertising, it is possible to deliver ads to individual persons, via cookies and IP addresses, and to then track the behavior of those persons, including whether they convert after seeing the advertisement by observing their clicks on advertisements and conversions on web sites.


In TV, advertisements may be embedded in a single high definition video stream, and broadcast using over-the-air terrestrial transmission towers, satellite, and/or cable. The single signal transmission enables high bandwidth and very high quality TV signal. However, this introduces significant limitations. Apart from small experimental TV systems, there are currently no available technologies for delivering advertisements one-to-one to households at a scale equivalent to TV broadcasting.


A second major limitation is determining whether a purchase was influenced by the TV advertisement. Standard TV systems do not allow advertisers to know if individuals saw the advertisements. Further, standard TV systems cannot determine if an individual who is purchasing a product or service, saw the advertisement.


Because of these and other limitations, since the 1950s, this medium has been tracked using a 25,000 person, Nielsen “panel” with “diaries.” The individuals on Nielsen's panel could report on what they saw on TV, and then this data could be extrapolated across the United States (115,000,000 households). This panel is both small and yet expensive to maintain. However, in the United States, set top boxes (“STBs”) are now present in over 91.5% of US homes. Further, since 2009, STBs with return path capabilities have proliferated in the United States, comprising over 30% of STBs in households. The number of households with STBs is greater in size than the Nielsen panel, and the scale and richness of detail of STB data allows for new capabilities in TV advertisement targeting.


In order to utilize new capabilities, the present disclosure relates to systems and methods that use current U.S. data collection and U.S. TV broadcasting capabilities. As will be discussed in further detail below, the systems and methods discussed herein provide a framework for understanding certain TV targeting problems and approaches for solving them. Benefits of the present disclosure may include providing detailed descriptions of data formats available for television targeting; formalizing TV advertisement targeting problems into one or more objective functions; identifying variables available for advertisement targeting that can be used for targeting practical TV advertisement campaigns; providing a plurality of algorithms for TV data; and combining the plurality of algorithms to provide desired results.


SUMMARY OF THE DISCLOSURE

According to certain embodiments, methods are disclosed for teaching a television targeting system to reach product buyers. One method includes receiving, at a server, one or more heterogeneous sources of media data, the media data including television viewing events; generating, by the server, a plurality of media asset patterns from the one or more heterogeneous sources of media data, the plurality of media asset patterns being possible media placements which are represented as conjunctive expressions; calculating, by the server, one or more heterogeneous advertisement effectiveness measures for each media asset pattern; calculating, by the server for a plurality of pairs of an advertisement and a media instance, a number of previously placed airings of the advertisement in the media instance; and generating, by the server, a model to predict advertisement effectiveness for each pair of an advertisement and a media instance based on a combination of the ad effectiveness measures and the number of previously placed airings of the advertisement in the media instance.


According to certain embodiments, systems are disclosed for teaching a television targeting system to reach product buyers. One system includes a data storage device storing instructions; and a processor configured to execute the instructions to perform a method including: receiving, at a server, one or more heterogeneous sources of media data, the media data including television viewing events; generating, by the server, a plurality of media asset patterns from the one or more heterogeneous sources of media data, the plurality of media asset patterns being possible media placements which are represented as conjunctive expressions; calculating, by the server, one or more heterogeneous advertisement effectiveness measures for each media asset pattern; calculating, by the server for a plurality of pairs of an advertisement and a media instance, a number of previously placed airings of the advertisement in the media instance; and generating, by the server, a model to predict advertisement effectiveness for each pairing of an advertisement and a media instance based on a combination of the ad effectiveness measures and the number of previously placed airings of the advertisement in the media instance.


Additional objects and advantages of the disclosed embodiments will be set forth in part in the description that follows, and in part will be apparent from the description, or may be learned by practice of the disclosed embodiments. The objects and advantages of the disclosed embodiments will be realized and attained by means of the elements and combinations particularly pointed out in the appended claims. As will be apparent from the embodiments below, an advantage to the disclosed systems and methods is that multiple parties may fully utilize their data without allowing others to have direct access to raw data. The disclosed systems and methods discussed below may allow advertisers to understand users' online behaviors through the indirect use of raw data and may maintain privacy of the users and the data.


It is to be understood that both the foregoing general description and the following detailed description are exemplary and explanatory only and are not restrictive of the disclosed embodiments, as claimed.





BRIEF DESCRIPTION OF THE DRAWINGS

The accompanying drawings, which are incorporated in and constitute a part of this specification, illustrate various exemplary embodiments and together with the description, serve to explain the principles of the disclosed embodiments.



FIG. 1A depicts an exemplary analytics environment and an exemplary system infrastructure for modeling and detailed targeting of television media, according to exemplary embodiments of the present disclosure;



FIG. 1B depicts exemplary data feeds of one or more media agencies of media plan data, according to exemplary embodiments of the present disclosure;



FIG. 1C depicts exemplary data feeds of one or more media agencies of media verification data, according to exemplary embodiments of the present disclosure;



FIG. 1D depicts exemplary data feeds of one or more media agencies of trafficking/distribution data, according to exemplary embodiments of the present disclosure;



FIG. 1E depicts exemplary data feeds of call center data of one or more call centers, according to exemplary embodiments of the present disclosure;



FIG. 1F depicts exemplary data feeds of e-commerce data of one or more e-commerce data vendors, according to exemplary embodiments of the present disclosure;



FIG. 1G depicts exemplary data feeds of order data of one or more data order processing/fulfillment providers, according to exemplary embodiments of the present disclosure;



FIG. 1H depicts exemplary data feeds of consumer data enrichment of one or more audience data enrichment providers from one or more data bureaus, according to exemplary embodiments of the present disclosure;



FIG. 1I depicts exemplary data feeds of guide data of one or more guide services, according to exemplary embodiments of the present disclosure;



FIG. 1J depicts exemplary data feeds of panel data of one or more panel data enrichment providers, according to exemplary embodiments of the present disclosure;



FIG. 2A depicts a graph of person-level conversions per advertisement view for certain products, according to exemplary embodiments of the present disclosure;



FIG. 2B depicts another graph of person-level conversions per advertisement view for certain products, according to exemplary embodiments of the present disclosure;



FIG. 2C depicts a graph of phone calls per million impressions in response to an embedded phone number in a TV advertisement observed after placing the advertisement in the same station-day-hour, according to exemplary embodiments of the present disclosure;



FIG. 3A depicts a graph of three major classes of an ad effectiveness metric including demographic match, phone response per impression (“RPI”), and buyers per impression (“BPI”) versus the size of media being scored, according to exemplary embodiments of the present disclosure;



FIG. 3B depicts a bar graph of usability of the three major classes of an ad effectiveness metric including demographic match, RPI, and BPI, according to exemplary embodiments of the present disclosure;



FIG. 4A depicts a bar graph in which all variables for a given ad effectiveness metric may be selected, according to exemplary embodiments of the present disclosure;



FIG. 4B depicts a bar graph in which missing value variables may be allowed and/or selected, according to exemplary embodiments of the present disclosure;



FIG. 4C depicts a bar graph of a comparison of variables (and weights) selected versus the variable correlations, according to exemplary embodiments of the present disclosure;



FIG. 5 depicts a graph of predicted ad response versus future responses per million impressions, according to exemplary embodiments of the present disclosure;



FIG. 6A depicts a graph of generated media asset pattern being tested over time, according to exemplary embodiments of the present disclosure;



FIG. 6B depicts graph of another generated media asset pattern being tested over time, according to exemplary embodiments of the present disclosure;



FIG. 6C depicts a graph of yet another generated media asset pattern being tested over time, according to exemplary embodiments of the present disclosure;



FIG. 7A depicts exemplary pseudo code in which queries count historical airings by station-day-hour, and count a number of airings in a program, according to exemplary embodiments of the present disclosure;



FIG. 7B depicts another exemplary pseudo code in which queries count historical airings by station-day-hour, and count a number of airings in a program, according to exemplary embodiments of the present disclosure;



FIG. 8 is a simplified functional block diagram of a computer that may be configured as a device or server for executing the methods, according to exemplary embodiments of the present disclosure;



FIGS. 9A-9N depict exemplary charts and graphs of how programs change in popularity, according to exemplary embodiments of the present disclosure;



FIG. 10 depicts an example of a branched model, according to exemplary embodiments of the present disclosure;



FIG. 11 depicts an error analysis of impressions forecasting, according to exemplary embodiments of the present disclosure;



FIG. 12 depicts an exemplary accuracy analysis on various conditions, according to exemplary embodiments of the present disclosure;



FIG. 13 depicts an exemplary process for automated media scoring, according to exemplary embodiments of the present disclosure;



FIG. 14 depicts an example of a sample scored output text file, according to exemplary embodiments of the present disclosure;



FIG. 15 depicts another example of a sample scored output text file, including sample scored output, according to exemplary embodiments of the present disclosure;



FIG. 16 depicts another example JSON output from the scoring service showing a media instance being scored, according to exemplary embodiments of the present disclosure;



FIG. 17 depicts an exemplary graph of standardized score (x-axis) versus buyers per million impressions (y-axis), according to exemplary embodiments of the present disclosure;



FIG. 18 depicts an exemplary graph of a comparison of Media Asset Patterns, according to exemplary embodiments of the present disclosure;



FIG. 19 depicts an exemplary graph depicting that the program is often poorly populated; and



FIGS. 20 and 21 depict an exemplary graph showing that program authority is not as predictive as the program.





DETAIL DESCRIPTION OF EMBODIMENTS

Aspects of the present disclosure, as described herein, relate to determining what television programs to place advertisements on for certain products, by evaluating aspects of the viewers of those television programs. Aspects of the present disclosure involve recognizing that media may be represented and evaluated by the demographics of the people who watch that media. The system may perform a match against media by looking for the television program whose viewers are the closest match to the customers that buy the product to be advertised. After the system finds a close match, it may recommend buying that media (i.e., placing the product ad within that television program). Aspects of the present disclosure may use targeting capabilities, tracking, and delivery, and may add in individualized information to its demographic segment information in order to improve the matching quality.


In one embodiment, the method used by a media buyer may include using Nielsen aggregated data to determine which program to purchase. Furthermore, while a Nielsen panel may be a useful data source and use of this data is described in this disclosure, the Nielsen viewer panel may be somewhat limited by its relatively small size, and limitations in covering certain geographic areas. Accordingly, a variety of enhancements are discussed for making the techniques described below compatible with multiple other data sources (including census data, set top box data, and linked buyer data) so as to create a highly complete and rich profile based on millions of viewers, over 400 variables, and buyers rather than viewers.


Various examples of the present disclosure will now be described. The following description provides specific details for a thorough understanding and enabling description of these examples. One skilled in the relevant art will understand, however, that the present disclosure may be practiced without many of these details. Likewise, one skilled in the relevant art will also understand that the present disclosure may include many other related features not described in detail herein. Additionally, some understood structures or functions may not be shown or described in detail below, so as to avoid unnecessarily obscuring the relevant description.


The terminology used below may be interpreted in its broadest reasonable manner, even though it is being used in conjunction with a detailed description of certain specific examples of the present disclosure. Indeed, certain terms may even be emphasized below; however, any terminology intended to be interpreted in any restricted manner will be overtly and specifically defined as such in this Detailed Description section.


The systems and method of the present disclosure allow for the receiving and processing of TV (media) related data and consumer related data from a plurality of different data sources and of a variety of different data types and formats. Based on the received data, the systems and methods may build a model that may be used to estimate a probability of reaching a particular set of persons. The estimated probability may then be used to determine a value associated with buying an advertisement spot within a television program for the advertisement.


System Architecture


Any suitable system infrastructure may be put into place to receive media related data to develop a model for targeted advertising for television media. FIG. 1A and the following discussion provide a brief, general description of a suitable computing environment in which the present disclosure may be implemented. Although not required, aspects of the present disclosure are described in the context of computer-executable instructions, such as routines executed by a data processing device, e.g., a server computer, wireless device, and/or personal computer. Those skilled in the relevant art will appreciate that aspects of the present disclosure can be practiced with other communications, data processing, or computer system configurations, including: Internet appliances, hand-held devices (including personal digital assistants (“PDAs”)), wearable computers, all manner of cellular or mobile phones (including Voice over IP (“VoIP”) phones), dumb terminals, media players, gaming devices, multi-processor systems, microprocessor-based or programmable consumer electronics, set-top boxes, network PCs, mini-computers, mainframe computers, and the like. Indeed, the terms “computer,” “server,” and the like, are generally used interchangeably herein, and refer to any of the above devices and systems, as well as any data processor.


Aspects of the present disclosure may be embodied in a special purpose computer and/or data processor that is specifically programmed, configured, and/or constructed to perform one or more of the computer-executable instructions explained in detail herein. While aspects of the present disclosure, such as certain functions, are described as being performed exclusively on a single device, the present disclosure may also be practiced in distributed environments where functions or modules are shared among disparate processing devices, which are linked through a communications network, such as a Local Area Network (“LAN”), Wide Area Network (“WAN”), and/or the Internet. In a distributed computing environment, program modules may be located in both local and remote memory storage devices.


Aspects of the present disclosure may be stored and/or distributed on non-transitory computer-readable media, including magnetically or optically readable computer discs, hard-wired or preprogrammed chips (e.g., EEPROM semiconductor chips), nanotechnology memory, biological memory, or other data storage media. Alternatively, computer implemented instructions, data structures, screen displays, and other data under aspects of the present disclosure may be distributed over the Internet and/or over other networks (including wireless networks), on a propagated signal on a propagation medium (e.g., an electromagnetic wave(s), a sound wave, etc.) over a period of time, and/or they may be provided on any analog or digital network (packet switched, circuit switched, or other scheme).


Use of the system of FIG. 1A may involve multiple initial steps of setting up data feeds that can be used to receive data for building one or more models as described herein for evaluating television programs, estimating ad effectiveness, and estimating ad response.


One step may be to setup data feeds with one or more media agencies, which may ensure the collection of all the data about what media is being purchased, running, and trafficked to stations. This may also ensure that there is an accurate representation of the available television media. This step may include setting up data feeds for one or more of: media plan data (e.g., as shown in FIG. 1B), which may include data that is produced by media buyers purchasing media to run in the future; media verification data (e.g., as shown in FIG. 1C), which may include data that is generated by third-party verification services; and/or trafficking/distribution data (e.g., as shown in FIG. 1D), which may include sample trafficking instructions and/or order confirmations sent to TV stations; media response data which is the response of viewers to the TV ad, captured either through web activity, phone activity or other responses; TV schedule guide data which comprises data on upcoming program airings, TV set top box data which comprises a record of viewing activity from set top box subscribers; TV panel data which comprises a record of viewing activity from television viewers.


Media plan data may include a station a commercial will run on, an advertiser, topic information, a media cost associated with the purchase, a phone number, and/or a web address that is associated with the commercial for tracking purposes.


Third-party verification services may watermark commercials and monitor when the media was run across all TV stations. The data generated by third-party verification services may be used to verify that a media instance that was purchased for an advertisement spot was actually displayed on TV.


The sample trafficking instructions and/or order confirmation may include a product that was purchased, and instructions that a station is to use when displaying a commercial.


Another step may be to setup data feeds with one or more call centers, which may ensure there is accurate data about callers that called into specific phone numbers. This step may include receiving a call center data feed (e.g., as shown in FIG. 1E). Call center data may include any data associated with phone responses to phone numbers displayed in a commercial.


Yet another step may be to setup one or more data e-commerce vendor data feeds. E-commerce data feeds may be setup to receive recurring data feeds with a vendor and/or internal system of an advertiser that records orders that come in from an advertiser's website (e.g., as shown in FIG. 1F). E-commerce data may include orders that came in on an advertiser's website, customer information, and/or a time, volume, and/or substance of the orders. Another step may be to set up one or more web activity feeds with a vendor and/or internal system of an advertiser that records web activity corresponding to TV broadcasts.


Another step may be to setup one or more data order processing/fulfillment data feeds. Data order processing/fulfillment data feeds may be setup to receive recurring data feeds with order vendor and/or internal system that physically handles the logistics of billing and/or fulfillment. This step may ensure an accounting of subsequent purchases, such as subscriptions and for returns/bad debt, etc., and may ensure accurate accounting for revenue. This step may also include receiving data from a series of retail Point of Sale (“PoS”) systems (e.g., as shown in FIG. 1G). Order data may include a purchase record, subsequent purchases, debt collection information, and return information.


Another step may be to setup one or more audience data enrichment data feeds with one or more data bureaus. This step may ensure that callers, web-converters, and/or ultimate purchasers have their data attributes appended to their record in terms of demographics, psychographics, behavior, etc. (e.g., as shown in FIG. 1H). Examples of data bureaus may include Experian, Acxiom, Claritas, etc. This data may include attributes about consumers from the various data bureaus, such as demographics, psychographics, behavioral information, household information, etc.


Yet another step may be to setup one or more data feeds with one or more guide services. This step may ensure that forward looking guide service data is ingested into the system. This data may be programming based on what is going to run on television for the weeks ahead (e.g., as shown in FIG. 1I). This upcoming media may be scored to determine which of this media should be purchased. Program guide data may include data related to a future run of programming, such as a station, time, program name, program type, stars, and general text description.


Another step may be to setup one or more data feeds for panel data enrichment. Data related to purchasers of products on television, set top box viewer records, and/or existing panels may be received as a data feed and appended to an advertiser's purchaser data mentioned above (FIG. 1J). Panel data enrichment may include viewer/responder data, such as demographic, psychographic, and/or behavioral data.


In another step, all of the underlying data may be put into production. For example, all of the data feeds setup from steps one through seven may be loaded into an intermediate format for cleansing, adding identifiers, etc. Personally Identifiable Information (“PII”) may also be split and routed to a separate pipeline for secure storage. As shown in FIG. 1A, an analytics environment 100 may include a media processing system 102, an agency data system 104, an advertiser data system 106, an audience data system 108, and a processed media consumer system 110.


At the next step, media plan data 104a, verification data 104b, and/or trafficking data 104c of the agency data system 104 may be received at a data feed repository 112 of the media processing system 102. Further, call center data 106a, e-commerce data 106b, and/or order management data 106c of advertiser data system 106 may be received at the data feed repository 112. Additionally, viewer panel data 108a, guide data 108b, and/or consumer enrichment data 108c of the audience data system 108 may be received at the data feed repository 112. After one or more of data feeds are received by the feed repository 112, data may be extracted from the data feeds by extractor 114 of media processing system 102.


At another step, business logic/models may be run for matching responses and orders to media (“attribution”). In this step, the data extracted from the data feeds has been ingested into the system at the most granular form. Here, the phone responses may be matched up to media that generated it. The e-commerce orders may be matched using statistical models to the media that likely generated them. As shown in FIG. 1A, transformer 116, aggregator 118, and analytics engine 120 of the media processing system 102 may process the aggregated data of the data feeds. Analytics engine 120 may include various sub-engines, such as experiment engine 120a, match engine 120b, optimize engine 120c, and/or attribute engine 120d, to perform various analytical functions.


At yet another step, the analyzed data may be loaded into databases. For example, the data may have already been aggregated and/or final validation of the results may have been completed. After this, the data may be loaded by loader 122 into one or more databases 124 for use with any of the upstream media systems, such as data consumers system 110. These include the ability to support media planning through purchase suggestions, revenue predictions, pricing suggestions, performance results, etc. One or more databases 124 may include customers database 124, campaign database 124, station inventory database 124, performance database 124, models database 124, and/or PII database 124.


At another step, the analyzed data may be used by presentation module 126. In this step, all of the data may be accessible to the operators of various roles in the media lifecycle. This may include graphical tools for media planning (where the targeting in this application primarily fits), optimization, billing, trafficking, reporting, etc.


The above-described system may be used to gather, process, and analyze TV related data. This data may then be used to identify certain available media instances, or advertisement spots, that an advertiser may purchase to display an advertisement. As will be described in further detail below, advertisement spots, also referred to as media instances, may be evaluated and scored to assist an advertiser in choosing which media instance to purchase.


Media Instances


As described above, a TV media instance, Mi, may be any segment of time on TV that may be purchased for advertising. The media instance, Mi, as an element of the Cartesian product, may be defined as follows:

MiεS×P×D×H×T×G×POD×POS×L


where S is station, P is program, D is day-of-week, H is hour-of-day, T is calendar-time, G is geography, POD is the ad-pod, POS is the pod-position, and L is media-length.


Stations may include broadcast and/or cable stations, and may be identified by their respective call letters, such as KIRO and CNN. Geography may include national (nationwide), one or more direct market association areas, such as Miami, Florida, and/or cable zones, such as Comcast Miami Beach.


An ad-pod may be a set of advertisements that run contiguously in time during a commercial break for a TV program. Pod-position may be the sequential order of the advertisement within its pod. Media length may be the duration of the time segment in seconds. Media length, for example, may include 15, 30, 45, and/or 60 second spots.


The present disclosure allows the advertiser to select a set of media instances, Mi, to purchase for advertisement targeting for an ideal audience. The present disclosure also allows the advertiser to provide a bid, CPI(Mi) cost per impression, such that the expected advertisement response per dollar is maximized, as follows:

Mi: max ΣirpiΩ(MiI(Mi)
subject to ΣiCPI(MiI(Mi)≤B and V({Mi})=true


where rpiΩ(Mi) is the response (also referred to as a conversion, a sale, and/or revenue) per impression or target-audience-concentration per impression or probability-of-target-audience per impression for the given media instance, Mi; I(Mi) are the impressions for media instance, Mi; B is the TV campaign budget; and V determines if the set of media instances, Mi, violates advertiser-defined rotation rules. Rotation rules may be, for example, running an advertisement no more than once per 60 minutes, having no greater than 5% of budget on any one network or day-part, etc. Rotation rules may be defined by TV advertisement buyers and/or broadcast networks.


One embodiment of the present disclosure is to iteratively select media instances in order of value per dollar, as follows:







M
i

:

max



r

p



i
Ω

(

M
i

)



CPI

(

M
i

)






subject to rotation rule constraints V until the budget is filled. CPI(Mi) and rpiΩ(Mi) are both estimates using historical clearing prices and media observations.


Methods will next be described for estimating the response per impression or target-audience-concentration per impression “rpiΩ(Mi)” part of the formula above.


Media Asset Patterns


A media asset pattern may be any set of variable value instantiations of a media instance. Formally, media asset pattern, may be a subset of instantiated features from the media instance Mimi,t⊆Mi, for example, a future media instance that is under consideration to buy may be Mi=(CNN, 8 pm, “Piers Morgan”, Tuesday, Dec. 12, 2012, Pod1, Pos2, 60 s). The following media asset patterns may be used to predict its performance: Station mi1=(CNN); Station-Hour-Pod mi2=(CNN, 8 pm, Pod1); Geography-Station mi3=(National-CNN); and others.


Table 1, below, shows a list of Media Asset Patterns used in one embodiment of the present disclosure.









TABLE 1







Media Asset Pattern types, and RPI functions used in one embodiment












Response





per


MapType

impression


NameSanitized
MAPType
calculation
Description





1-MBDemo-Station
Station
TRatio
Match between Panel viewer





demographics for a station





and product buyers


2-MBDemo-Program
Program
TRatio
Match between Panel viewer





demographics for a program





and product buyers


3-Genre
NULL
TRatio
Match between Panel viewer





demographics for a program's





genre classification and





product buyers


4-MBDemo-Station -
Station -
TRatio
Match between Panel viewer


Rotation
Rotation

demographics for a Station-





Daypart and product buyers


5-MBDemo-Day of
Day of
TRatio


Week - Hour of Day
Week-



Hour of Day


6-MBDemo-Day of
Day of
TRatio


Week
Week


7-MBDemo-Hour of Day
Hour of Day
TRatio


8-MediaMarket
MediaMarket
TRatio


9-State
State
TRatio


10-State per capita
State
TRatio
Number of buyers per capita





in a state


11-DMA per capita
DMA
TRatio
Number of buyers per capita





in a DMA area


12-Zone
Zone
TRatio
Number of buyers per capita





in a cable zone area


13-Zone per capita
Zone
TRatio
Number of buyers per capita





in a cable zone area


14-MBDemo-Station -
Station -
TRatio


Day - Hour
Day - Hour


15-Advertising Patch
Patch
TRatio
Number of buyers per capita


Area per capita


in an advertising patch area


16-STB Device-Station
Station
TRatio
Match between STB Device





level demographics for Station





and product buyers


17-STBDevice-Station -
Station -
TRatio


Rotation
Rotation


18-STBDevice-Station -
Station -
TRatio


Day - Hour
Day - Hour


19-STBDevice-Station -
Station -
TRatio


Day
Day


20-STBDevice-Station
Station
TRatio


21-STBDevice-Station -
Station -
TRatio


Rotation
Rotation


22-STBDevice-Station -
Station -
TRatio


Day - Hour
Day - Hour


23-STBDevice-Day of Week
Day of Week
TRatio


24-STBDevice-Station-
Station -
TRatio


Program Authority
Program



Authority


25-STBDevice-Program
Program
TRatio


26-Zip Code per capita
Zipcode
TRatio
Number of buyers per capita





in Zipcode


27-STBHead-Station
Station
TRatio
Match between STB Head-





End level Station viewing





demographics and buyers


28-STBHead-Program
Program
TRatio


29-STBHead-Day of
Day of
TRatio


Week
Week


30-STBHead-Hour of
Hour of Day
TRatio


Day


31-STBHead-Station -
Station -
TRatio


Rotation
Rotation


32-STBHead-Station -
Station -
TRatio


Day - Hour
Day - Hour


33-USCensus-DMA
DMA
TRatio
Match between US Census





demographics for DMA and





product buyers


34-USCensus-Zip Code
Zip Code
TRatio
Match between US Census





demographics for zip and





product buyers


35-STBDevice-Station -
Station -
TRatio


Day - Hour - Program
Day - Hour -



Program


36-STBHead-DMA -
DMA-
TRatio


Station - Day - Hour
Station -



Day - Hour


37-Telesale-Station
Station
RPI
Phone responses per





impression historically





recorded when running on this





national station (e.g., ABC)


38-Telesale-Station -
Station -
RPI
Phone responses per


Day - Hour
Day - Hour

impression historically





recorded when running on this





station-day-hour


39-Telesale-Station-
Station
RPI
Phone responses per


Local


impression historically





recorded when running on this





local area station (e.g., KIRO)


40-Telesale-Station -
Station -
RPI


Day - Hour-Local
Day - Hour


41-STBHead-Actual Airings
Airing
Impressions


42-STBHead-DMA -
DMA-
Impressions


Station - Day - Hour-
Station -


Local
Day - Hour


43-Telesale-Phone
Phone
RPI


Response Actual Airings
Response



Actual



Airings


44-STBSale-Source
Airing
SourceViewPct


Viewers Actual


45-STBSale-Station -
Station -
SourceViewPct
Buyers per impression


Day - Hour
Day - Hour

measured in the audience of





this station-day-hour


46-STBSale-Station
Station
SourceViewPct


47-STBSale-Station-
Station -
SourceViewPct


Program
Program


48-AgeGender-
Airing
Impressions


CompetitiveData Source


Actual Airings


49-AgeGender-DMA -
DMA-
Impressions


Station
Station


50-AgeGender-DMA -
DMA -
Impressions


Station - Day - Hour
Station -



Day - Hour


51-AgeGender-Station -
Station -
TRatio


Day - Hour
Day - Hour


52-AgeGender-Station
Station
TRatio
Match between age-gender





demographics of panel





viewers on this station versus





buyers


53-AgeGender-Station -
Station -
TRatio


Program
Program


54-AgeGender-
Station -
TRatio
Match between age-gender


Syndication Station -
Program

demographics of panel


Program Authority
Authority

viewers on this Syndication





station versus buyers


55-AgeGender-Program
Program
TRatio


Authority
Authority


56-STBDevice-
Airing
TRatio


ActualAiring


57-Telesale-Station
Station
RPI


58-Telesale-Station -
Station -
RPI


Day - Hour
Day - Hour


59-AgeGender-Station -
Station -
TRatio


Program Authority
Program



Authority


60-STBHead-Station -
Station -
TRatio


Program Authority
Program



Authority


61-AgeGender-DMA -
DMA-
Cost


Station - Day - Hour-
Station -


Local
Day - Hour


62-AgeGender-DMA -
DMA-
Cost


Station-Local
Station


63-AgeGender-DMA
DMA
Cost


Station - Program
Station -


Authority-Local
Program



Authority


64-AgeGender-
Airing
Cost


CompetitiveData Actual


Airings-Local


65-AgeGender-
Station -
Impressions


SpecialEvent-Station -
Program


Program Authority
Authority


66-STBHead-
Station -
Impressions


SpecialEvent-Station -
Program


Program Authority
Authority


67-STBHead-Station -
Station -
Impressions


Day - Hour-Local/Airing
Day - Hour


68-5 minute Attributed
Station -
WPI


Web Spike Station -
Program


Program Authority
Authority


69-5 minute Attributed
Station -
WPI


Web Spike Station -
Day - Hour


Day - Hour


70-5 minute Attributed
Station
WPI


Web Spike Station


71-Day Hour Subtracted
Station -
WPI


Web Response Verified
Program


Airing - Station -
Authority


Program Authority


72-Day Hour Subtracted
Station -
WPI


Web Response Verified
Day - Hour


Airing Station - Day -


Hour


73-Day Hour Baseline
Station -
WPI


Subtracted Web Response
Day - Hour


Verified Airing


Station - Day - Hour


74-STBHead-Station -
Station -
TRatio


Day - Hour - Quarter
Day - Hour -



Quarter


75-STBHead-Program -
Program
TRatio


Quarter
Authority -



Quarter


76-AgeGender-Program -
Program
TRatio


Quarter
Authority -



Quarter


77-STB Head-Weekpart-
Weekpart -
TRatio


Daypart-SpecialEvent-
Daypart -


Station - Program
Station -


Authority
Program



Authority


78-AgeGender-
Weekpart -
TRatio


Weekpart-Daypart-
Daypart -


SpecialEvent-Station -
Station -


Program Authority
Program



Authority


79-N-Magazine
Magazine
TRatio


80-STBHead-LocalDMA-
DMA
TRatio


Station-Program
Station -



Program



Authority


81-STBHead-STBHead-
Station -
TRatio


Currrent Quarter-S
Program


tation - Program
Authority


Authority


82-AgeGender-Station -
Station -
TRatio


Day - Hour
Day - Hour


83-AgeGender-Station -
Station -
TRatio


Program
Program



Authority


84-STBSale-Station-
Station -
SourceView


Program
Program
MinutesPct



Authority


84-STBSale-Station-
Station -
SourceView


Day-Hour
Day - Hour
MinutesPct


86-Station-Program
Station -
Impressions


Authority
Program



Authority -



Quarter


87-Station-Day-Hour
Station -
Impressions



Day - Hour -



Quarter


89-AgeGender-Station-
Station -
Impressions


Day-Hour-Week
Day - Hour -



Week


90-STBHead-FirstAiring-
Station -
Impressions


Station-Program
Program



Authority -



First Airing


91-AgeGender-DMA-
DMA-
TRatio


Station-Day-Hour
Station -



Day - Hour


92-AttribuedWebSpike-
Station -
WPI


Station-Day-Hour
Day - Hour


93-AgeGender-Station-
Station -
Impressions


Program-PodA
Program



Authority -



Pod


94-STBHead-Actual
Same time
Impressions


Airings Minus 7 Days
minus 7



days


95-STBHead-Actual
Same time
Impressions


Airings Minus 14 Days
minus 14



days


96-STBHead-Actual
Same time
TRatio


Airings Minus 21 Days
minus 21



days


97-STBHead-Actual
Same time
Impressions


Airings Minus 28 Days
minus 28



days


98-STBHead-Station-
Station -
Impressions


Program-Hour
Program -



Hour


99-STBHead-Actual
Most recent
Impressions


Airings-Station-Program-
known


Hour
airing of



same



program


100-STBHead-Actual
Same time
Impressions


Airings-Minus 29 to 42
29-42 days


Days
prior to



present


101-STBHead-Actual
Same time
Impressions


Airings-Minus 43 to 56
43-56 days


Days
prior to



present


102-STBHead-Actual
Same time
Impressions


Airings-Minus 57 to 70
57-70 days


Days
prior to



present


103-AdapTV Video
Digital video
NULL


Publisher Sites
publisher site


104-AdapTV Segments
Digital
NULL



Segment


105-AgeGender-
Station -
TRatio


Syndication-Station -
Day - Hour


Day - Hour


105-AgeGender-
Station -
TRatio


Syndication-Station -
Program


Program Authority
Authority









Examples of various media asset pattern types will now be described in more detail.


Media Asset Pattern Example 1A: Station-Program

TV programs are intuitively what people tune into when watching television. Different programs appeal to different people. For example, viewers of TLC's “I Didn't Know I Was Pregnant” may be different from viewers of SYFY's “Continuum.”


There are over 450,000 weekpart-daypart-programs available to be purchased on TV. The programs may be good predictors of advertisement performance. An example of media asset patterns and their calculated ad effectiveness scores is shown in table 2, below.









TABLE 2







Media Asset Pattern 60 (STBHead - Station-Program) and ad effectiveness scores










MediaAssetPatternKey
sourcesegmentkey
MediaAssetPatternTypeID
Correlation













ABC - Insanity Workout!
110356
60
0.05977


ABC - Inside Edition
110356
60
0.043434


ABC - Inside Story
110356
60
0.194032


ABC - Inside the Big East
110356
60
0.122061


ABC - Inside Washington
110356
60
−0.06444









Media Asset Pattern Example 1B: High-Value Station-Program

In addition to using programs in general, it is also possible to demarcate a special class of programs which may be referred to as “high impact programs.” These programs have high observed impressions per expected impressions for their station-timeslot,








I

(

m
P

)


I

(

m

S

D

H


)


.





Impactful programs may include event programs, such as “The Academy Awards,” football games, and very popular reality programs, e.g., “Dancing with the Stars.” Impactful programs may also include “cultural phenomena,” such as “Honey Badgers!” Table 3 below depicts programs and their respective impressions performance relative to their expected performance in their timeslot. A media asset pattern of High-Impact-Program can then be established and used by the system.










TABLE 3





Station-Program
RE
















NFLN - NFL Football
20.49714


NBC - Super Bowl XLVI
18.06963


NFLN - Postgame
15.35507


CBS - Super Bowl XLIV
15.2775


ESPN - NFL Football
12.66412


NBCSN - 2012 NHL All-Star Game
10.47042


SPD - NASCAR Sprint Cup
10.39651


FOX - Super Bowl XLV
9.862597


E! - Live from the Red Carpet: The 2012 Grammy Awards
4.467404


NBC - Macy's Thanksgiving Day Parade
4.434626


ABC - Oscars Red Carpet Live
4.288276


BBCA - William & Kate: The First Year
4.135


ABC - Dancing With the Stars
4.126531


VH1 - 2010 MTV Video Music Awards
3.863292


ABC - CMA Awards 2011
3.831977


FUSE - Whitney Houston: A Tribute
3.770582


VH1 - 2011 Video Music Awards
3.423895


E! - Live from the Red Carpet: The Academy Awards
3.30741


NBC - Voice
3.305157


CNN - Arizona Republican Presidential Debate
3.086414


CNN - New Hampshire GOP Debate
3.009244


E! - Live from the Red Carpet: Grammys
2.987157


WILD - Honey Badgers
2.939016









Media Asset Pattern Example 2: Station-Day-Hour

Stations often run similar programming in the same station-day-hour timeslots. This information may add value as a predictor, as some demographics may have a propensity to watch TV on certain times of day. For example, high income people tend to watch in prime-time, but not daytime. Weekday, daytime programming may be highly skewed toward older and/or lower income households.









TABLE 4







Media Asset Patterns for MAPType 32 - STBHead - Station-Day-Hour










MediaAssetPatternKey
sourcesegmentkey
MediaAssetPatternTypeID
Correlation













ABC - Su - 4 pm
110356
32
−0.49971


ABC - Su - 5 am
110356
32
0.114984


ABC - Su - 5 pm
110356
32
−0.26138


ABC - Su - 6 am
110356
32
0.279073


ABC - Su - 6 pm
110356
32
0.005131


ABC - Su - 7 am
110356
32
0.115856


ABC - Su - 7 pm
110356
32
−0.04855


ABC - Su - 8 am
110356
32
0.07703


ABC - Su - 8 pm
110356
32
−0.32483


ABC - Su - 9 am
110356
32
−0.19655


ABC - Su - 9 pm
110356
32
−0.43123









Media Asset Pattern Example 3: Program Master and Other Mastered Taxonomies

Program names are often recorded in television panel data and schedules in a variety of inconsistent ways, often because television program data is hand-entered. Thus when a buyer is attempting to buy “Cold Case,” the present disclosure may fail to find a match for “Cold Case” because the panel data might have recorded this as “Cold Case Sat.” In order to address this, the presently disclosed methods may use a series of mapping tables to map native panel strings to “mastered” versions of those strings, which may facilitate matching. The present disclosure also allows editors to inspect the native strings, and uses edit distance to identify similar mastered strings that each native string may be mapped to. These “mastered” program names are then used in media asset patterns. Examples of program master mappings are shown in Tables 5A-5C, below.









TABLE 5A







Table 5A: Program Master table showing entries for


“Cold Case”. “Cold Case” appears in


various panel sources described using a variety of


strings. These are mapped to a consistent string (ProgramMaster).









ExternalProgramMappingID
NielsenShowTitle
Title





137564
COLD CASE
Cold Case


137567
COLD CASE FRI
Cold Case


137568
COLD CASE FRI 2
Cold Case


137569
COLD CASE FRI 3
Cold Case


137570
COLD CASE FRI 4
Cold Case


137571
COLD CASE FRI 5
Cold Case


137572
COLD CASE FRI 6
Cold Case


137573
COLD CASE FRI 7
Cold Case


137574
COLD CASE FRI 8
Cold Case


239948
COLD CASE FRI 9
Cold Case


137575
COLD CASE MON
Cold Case


137576
COLD CASE MON 2
Cold Case


137577
COLD CASE MON 3
Cold Case


225605
COLD CASE MON 4
Cold Case


225606
COLD CASE MON 5
Cold Case


225607
COLD CASE MON 6
Cold Case


137578
COLD CASE SPEC
Cold Case


137579
COLD CASE SUS 2
Cold Case


137580
COLD CASE SYN AT
Cold Case


137581
COLD CASE SYN
Cold Case



MYNET AT


137582
COLD CASE THURS
Cold Case


137583
COLD CASE THURS 2
Cold Case


137584
COLD CASE THURS 3
Cold Case


137585
COLD CASE WED
Cold Case


137586
COLD CASE WED 2
Cold Case


137587
COLD CASE WED 3
Cold Case


197923
COLD CASE WED 4
Cold Case


197924
COLD CASE WED 5
Cold Case


197925
COLD CASE WED 6
Cold Case


197926
COLD CASE WED 7
Cold Case


137565
COLD CASE FILES
Cold Case Files


137566
COLD CASE FILES
Cold Case Files



M-F
















TABLE 5B







Table 5B: Program Master table showing entries for “Countdown to the Grammys.”









ExternalProgramMappingID
NielsenShowTitle
Title





138687
COUNTDOWN 2010
Countdown to the



GRAMMYS
Grammys


138691
COUNTDOWN 2011
Countdown to the



GRAMMYS
Grammys


138713
COUNTDOWN TO THE
Countdown to the



GRAMMYS
Grammys


143909
GRAMMY FASHION
Grammy Awards Fashion



WRAP
Wrap


138733
COUNTDOWN: 2012
Grammy Awards Red



GRAMMYS
Carpet Countdown


143908
GRAMMY AWARDS RED
Grammy Awards Red



CARPET
Carpet Countdown


143912
GRAMMY RED CARPET
Grammy Awards Red



CNTDWN
Carpet Countdown


132317
2012 GRAMMY
Grammy Takeover



TAKEOVER


147822
LRC: 2011 GRAMMYS
Live from the Red Carpet:




The Grammy Awards


147826
LRC: 2012 GRAMMYS
Live from the Red Carpet:




The Grammy Awards


143907
GRAMMY AWARDS
The Grammy Awards


147405
LIVE AT THE
The Grammy Awards



GRAMMYS


143911
GRAMMY NOMINATIN
The Grammy Nominations



CNCRT SP
Concert Live!!: Countdown




to Music's Biggest Night
















TABLE 5C







Table 5C: Program Master table showing entries


for “Academy Awards Red Carpet.”









ExternalProgramMappingID
NielsenShowTitle
Title





132829
ACADEMY AWARDS
Academy Awards Preview



PREVIEW


132586
84TH OSCAR RED
Academy Awards Red



CARPET
Carpet


151411
OSCARS RED CARPET
Academy Awards Red



2010
Carpet


151412
OSCARS RED CARPET
Academy Awards Red



LIVE 1
Carpet


151413
OSCARS RED CARPET
Academy Awards Red



LIVE 2
Carpet


151414
OSCARS RED CARPET
Academy Awards Red



LIVE 3
Carpet


138685
COUNTDOWN ACADEMY
Academy Awards Red



AWARDS
Carpet Countdown


132634
AA FSHIN WRAP-CARRIE
Academy Awards Red



ANN
Carpet Fashion Wrap


132827
ACADEMY AWARD FSHIN
Academy Awards Red



WRAP
Carpet Fashion Wrap


132635
AA ICON STARS LEGEND
Academy Awards: Iconic



FASH
Stars, Legendary Fashions


225452
ACAD AWRDS ICONIC
Academy Awards: Iconic



STRS LF
Stars, Legendary Fashions









Table 6, below, depicts an exemplary MediaAssetPatternType 53—AgeGender—Station—Program showing entries like “Academy Award”. Note that these programs are all actually the same program. “LRC” stands for “Live from the Red Carpet.”












TABLE 6






Source
MediaAsset



MediaAssetPatternKey
segmentkey
PatternTypeID
Correlation







E! - LRC:
110356
53
0.330511


12 ACADEMY


AWARD PT1


E! - LRC:
110356
53
0.249202


12 ACADEMY


AWARD PT2


E! - LRC:
110356
53
0.288986


2010 ACADEMY


AWARDS


E! - LRC:
110356
53
0.252108


2011 ACADEMY


AWARDS









Table 7, below, depicts an exemplary MAPType 59—AgeGender—Station—ProgramMaster showing programs like “Academy Awards”. The various program strings have been remapped to a single canonical program called “Live from the Red Carpet: The Academy Award.”












TABLE 7







Media





Asset



Sourcesegment
Pattern


MediaAssetPatternKey
Key
TypeID
Correlation







E! - Live from
110356
59
0.285531


the Red Carpet: The


Academy Awards










Media Asset Pattern Example 4: Auto-regressive airing: Same program, Same time, prior week


Human viewing behavior is periodic and so viewers of a program this week are likely to have also viewed the same program in the previous week. TV Program episodes are often sequential in that the story builds from one week to the next, or sports games follow events from the previous week, and in the same way, human viewing tends to track the episodes from week to week. During some seasons, viewership increases from episode to episode (e.g., see FIG. 9D, Walking Dead increased in viewership each week). Programs such as American Idol may languish and then their ratings may increase dramatically because of an event. Predicting the next broadcast of Walking Dead or American Idol can use the previous week's (or episode 2 weeks prior or 3 weeks prior) as an estimate. This turns out to be a very effective strategy for predicting the demographics of the next airing for the program.



FIG. 9A depicts how programs often increase in popularity as a season progresses. This is one reason why same-time-last-week is highly predictive of the next airing. If the average for the program over a season is taken, this may not be as good a predictor as same-time-last-week, since the latter has the latest changes in viewership.



FIG. 9B shows the performance of using previous weeks' episodes for predicting future impressions. Error predicting the next episode is lowest when the episode exactly 7 days prior and at the same hour is used. Error is slightly worse using 14 days prior, and slightly worse again using 21 days prior. The figure shows mean absolute error percentage versus number of days since today. Every 7 days the error between the present station-hour and previous is minimized. This shows that using same time last week is a good strategy for predicting demographic viewership of an upcoming broadcast. These may be called “same-program-same-time-last-x-week” features auto-regressive features since we're using lag terms to predict future impressions. Based on the error analysis below, lag terms that are as close as possible to the time of prediction may be used. For a live, running campaign, it may be desirable to verify that actual data is pulled through with as little latency as possible. When looking at same time last week, 25 weeks prior to the present, it may be that the opposite season is viewed. Error may be highest during this period.



FIG. 9B depicts how the error forecasting the demographics of the up-coming airing are lowest at the same time, same program last week (the sharp troughs in the above graph). The error is also low same-time-same-program-14-days-ago, and 21 days ago. Going further into the past, the error may increase, however. The further away from the time that is being predicted, the more likely it is that some event has occurred in the show which has changed viewership, or that the schedule may have changed and so a different audience is tuning in. The figure above actually shows performance in predicting household impressions, however demographic prediction has similar behavior.



FIG. 9C depicts how the error forecasting the demographics increases with the number of weeks in the past that is being forecasted. The error actually becomes very high about 180 days prior to the present. This reflects the fact that winter and summer programming tends to be quite different (e.g., summer sports are different from winter). A corollary of the above, is the same-time exactly 1 year ago, is also a good feature for predicting the current demographics. The figure above shows accuracy in forecasting impressions, but demographics follow a similar pattern.


Table 8, below, depicts an exemplary Media Asset Pattern Type 98—Station—Program—Hour—Prior 1 week: This shows the impressions generated by the same program, at the same hour 1 week prior to the airing.












TABLE 8






MediaAsset




MediaAssetPatternKey
PatternTypeID
HourofDay
Impressions


















BRAV - INSIDE THE
98
9
100586


ACTORS STUDIO - 9 am


SCI - FIREFLY - 1 pm
98
13
200248


SYFY - SCARE
98
13
237726


TACTICS - 1 pm


VH1C - MUSIC
98
2
10145


VIDEOS - 2 am


ADSM - COWBOY
98
3
544376


BEBOP - 3 am


FX - BUFFY THE
98
9
269022


VAMPIRE


SLAYER - 9 am


HLN - SHOWBIZ
98
4
52920


TONIGHT - 4 am


LOGO - 30 ROCK - 3 pm
98
15
9254









Media Asset Pattern Example 5: Time-Since-First-Airing

Premiere or First-time-Airings of Episodes for programs such as The Walking Dead tend to attract large viewing audiences. These premieres are often followed by a “same-day encore,” and then some repeats during the week. The audiences are much smaller for repeats that were first shown 40 or 100 days ago.


This phenomenon may be used to create a time-since-first-airing media asset pattern. This is a number 0 or higher (or coded as Station-Program-first-day, Station-Program-first-day encore, Station-Program-first-week, Station-Program-more than 1 week) which can be used to predict the audience and viewing audience impressions given a certain time since the first airing. In order to calculate this, the first detected episode number may be used to take the date of the first airing, and then take the fractional number of days since the first detection.


Table 9, below, depicts an exemplary Media Asset Pattern Type for Time-Since-First-Airing: Times are discretized into 0 (premiere), 0.5 (same-day encore), 7 (same week) and 8 (greater than 1 week since the first detected airing).












TABLE 9






Days since
mediaasset



Mediaassetpatternkey
first airing
pattern typeid
impressions


















CBS - Super Bowl
0.5
90
84939111


XLVII - 0.5


FOX - NFL Super
8
90
76759981


Bowl - 8


CBS - Super Bowl
0
90
69207813


XLVII - 0


FOX - NFL Super
0
90
66525098


Bowl - 0


FOX - Super Bowl
0
90
52947596


Postgame - 0


CBS - Super Bowl
0
90
48895479


on CBS Kick-Off


Show - 0


FOX - Glee - 0.5
0.5
90
31689157


FOX - NFL Football
0.5
90
30361066


Playoffs - 0.5


CBS - NFL Football
0.5
90
28335601


Playoffs - 0.5


CBS - NFL Football
8
90
27484440


Playoffs - 8










FIG. 9D depicts time-since-first-airing (line that is high and then drops) versus viewing impressions for program (line that has the three peaks). Specifically, FIG. 9D shows the viewing behavior of the Walking Dead in the lead-up to a series premiere (first peak). A Walking Dead marathon from the previous season starts at the far left of the graph, followed by season premiere. Then there is a same-day-encore of the premiere in which the program is shown again right after the premiere. Following that, the premiere is shown again during the week. On the second week, the premiere from last week is shown, and then the premiere for week 2 shows.


The above shows how viewership changes fairly dramatically with the premiere, encore, or repeat. A feature called time-since-last-airing may be used to help to predict the viewership of each program. The time-since-first-airing starts at the far left with a high value indicating that these are re-runs from last year. Then when the premiere is shown, the time-since-last-first-airing drops to 0 and there is a spike on viewing. After that it may be possible to see that time-since-first-airing changes between 0 and 7, and that the associated changes in viewing may be seen.


Media Asset Pattern Example 6: Pod Position

Pod position and commercial break are also important features of the ad insertion, and can dramatically affect the viewership and response per impression from the ad. In general the first pod has the highest viewership, and viewership then decreases throughout the commercial break. FIG. 9E shows response per impression as measured by phone response for first airing, middle and last airing in a commercial break. Specifically, FIG. 9E depicts how the first commercial to air in a break has the highest response pre impression. The last has the lowest. On average the performance degradation for the last commercial break is 5 times lower than for the first commercial in the break. FIG. 9F shows response per impression by order in commercial break. Specifically, FIG. 9F depicts how, with each additional commercial, the response per impression from the ad decreases. FIG. 9G suggests that later commercial breaks in a program perform better also. Specifically, FIG. 9G depicts how commercial breaks deeper into the program have higher response per impression. As described above, it may be possible and desirable to incorporate pod position into a representation of the media when estimating the response per impression.
















% through pod
RPI/RPI(0)









20%
100% 



40%
87%



60%
74%



80%
52%



100% 
22%










Using the above pod information it is possible to create media asset patterns of the form: Station-Program-PodSequence and to estimate performance of these differentially.


Media Asset Pattern Example 7: Local Market Audiences

TV broadcasts can be performed nationally and locally. Advertisers often execute local TV campaigns when they are trying to get very precise levels of targeting, for example during elections. Often particular geographic markets such as Birmingham AL behave differently to overall national population. For example, Montel may over-perform—have more engaged viewers—in the South and under-perform in the North. It may be possible to represent media as Market-Station-Day-Hour or Market-Station-Program and then measure the ad effectiveness or response per impression from these different markets, and use these in an ad targeting system.


Because there are a large number of local markets (210 DMAs), it is desirable to control the amount of data being retained. One embodiment utilizes a feature whereby it calculates the RPI or ad effectiveness metrics for each market, and then if the RPI metric is not significantly different (as measured in absolute difference) from the national RPI metric or ad effectiveness metric, then the local ad effectiveness metric can be deleted (converted to missing), which as described below, may result in the national RPI or ad effectiveness metric being used. The degree of absolute difference is a parameter that can be used to control how much local data is retained.


Table 10, below, depicts an example Market-Station-Program media asset patterns for a range of geographies and the same program. This shows that the estimated ad effectiveness varies by geography.













TABLE 10







Media






Asset



Sourcesegment
Pattern


MediaAssetPatternKey
key
TypeID
Correlation
MAPID



















SACR - KTFK - MLS Cup Soccer
110356
80
−0.09668
40255755


Playoffs


GRSC - WYFF - MLS Cup Soccer
110356
80
0.356705
40127923


Playoffs


NASH - WSMV - MLS Cup Soccer
110356
80
−0.04557
40157609


Playoffs


COLO - WCMH - MLS Cup Soccer
110356
80
−0.49754
40002762


Playoffs


LOUI - WAVE - MLS Cup Soccer
110356
80
−0.48667
40123908


Playoffs


PHL - WCAU - MLS Cup Soccer
110356
80
−0.46398
40224514


Playoffs


CLE - WKYC - MLS Cup Soccer
110356
80
−0.63222
39963073


Playoffs


NOR - WAVY - MLS Cup Soccer
110356
80
−0.6917
40213307


Playoffs


TUL - KJRH - MLS Cup Soccer
110356
80
0.000412
40330064


Playoffs


DAY - WDTN - MLS Cup Soccer
110356
80
−0.37268
40046919


Playoffs


GRNC - WXII - MLS Cup Soccer
110356
80
−0.14151
40366126


Playoffs


MOBI - WPMI - MLS Cup Soccer
110356
80
−0.03149
40074842


Playoffs


OKLA - KFOR - MLS Cup Soccer
110356
80
0.13376
40207308


Playoffs


SACR - KCRA - MLS Cup Soccer
110356
80
−0.64831
40279695


Playoffs


SHRE - KTAL -MLS Cup Soccer
110356
80
0.062029
40322737


Playoffs


CHAT - WRCB - MLS Cup Soccer
110356
80
−0.68651
39969068


Playoffs


SANA - KNIC - MLS Cup Soccer
110356
80
−0.46716
40039296


Playoffs


BIRM - WVTM - MLS Cup Soccer
110356
80
0.007384
39940916


Playoffs









Table 11, below, depicts an example Market-Station-Program media asset patterns and their ad effectiveness scores. The market shown is Birmingham AL.












TABLE 11







Media





Asset



Sourcesegment
Pattern


MediaAssetPatternKey
key
TypeID
Correlation


















BIRM - WVTM - Mister
110356
80
0.393448


Magoo's


Christmas Carol


BIRM - WVTM -
110356
80
0.007384


MLS Cup Soccer


Playoffs


BIRM - WVTM -
110356
80
−0.30599


MLS Major


League Soccer


BIRM - WVTM -
110356
80
−0.11523


Mockingbird


Lane









Media Asset Pattern Example 7: Quarter of Year

Viewership changes throughout the year, in some part in response to programming changes, but in other parts due to different events that occur each year. for example, each December, Hallmark's viewership increases dramatically as they air a variety of family favorite Christmas movies.


As shown in FIG. 9H, and in the table 12 below, in order to incorporate these changes in viewing, it may be possible to create media asset pattern types such as Station-Program-Quarter, and Station-Day-Hour-WeekNumber.












TABLE 12







Media





Asset



Sourcesegment
Pattern


MediaAssetPatternKey
key
TypeID
Correlation


















Hollywood Uncensored - Q1
110356
76
0.448947


Hollywood Uncensored - Q2
110356
76
0.59193


Hollywood Uncensored - Q3
110356
76
0.103446


Hollywood Uncensored - Q4
110356
76
0.380187


Hollywood's 10 Best - Q1
110356
76
0.419322


Hollywood's 10 Best - Q2
110356
76
0.416322


Hollywood's 10 Best - Q3
110356
76
0.550515


Hollywood's Greatest Love
110356
76
0.709967


Affairs of All Time - Q1


Hollywood's Greatest Love
110356
76
0.76959


Affairs of All Time - Q2


Hollywood's Greatest Love
110356
76
0.667494


Affairs of All Time - Q3


Hollywood's Hottest Car
110356
76
−0.19692


Chases - Q1


Hollywood's Hottest Car
110356
76
−0.46141


Chases - Q2


Hollywood's Hottest Car
110356
76
−0.2328


Chases - Q4









Media Asset Pattern Example 8: Genre

Media Assets can also be represented by their Genre. Table 13, below, shows genres as classified by Nielsen corporation using their taxonomy, and how programs in those genres were scored for a demographic match to buyers. For example, Devotional is the genre that has the highest correlation with buyers—a result which makes sense as these customers tend to be religious and view a lot of religious programming.









TABLE 13







Media Asset pattern type 3 - Genre














MediaAssetPattern





MediaAssetPatternKey
sourcesegmentkey
TypeID
Correlation
MAPID
Counts















DEVOTIONAL
110356
3
0.747485
23100
6234


QUIZ-GIVE AWAY
110356
3
0.738476
25200
48425


PRIVATE DETECTIVE
110356
3
0.717184
25143
131313


QUIZ-PANEL
110356
3
0.708613
25201
2841


AUDIENCE
110356
3
0.672347
22253
141666


PARTICIPATION


NEWS
110356
3
0.667453
24746
49792


CONVERSATIONS,
110356
3
0.660163
22893
33610


COLLOQUIES


WESTERN DRAMA
110356
3
0.58834
26245
476043


PAID PROGRAMMING
110356
3
0.574373
24951
3397


SUSPENSE, MYSTERY
110356
3
0.49955
25812
50258









Media Asset Pattern Example 9: Local Market Sales

TV broadcasts occur locally and nationally. It may even be possible to use data about the sales per capita in particular geographic areas to inform the presently disclosed system as to the expected response from these areas when an ad is broadcast in these areas. The media asset pattern type in this case is simply a local market which may or may not include the program information.


Media Asset Pattern Example 10: Programs Containing Keyword

Media Asset Patterns can also be represented by the keywords of program names. An example is shown in table 14, below. When the keywords below are in the program title, impressions are on average higher than expected. It is possible to create Media Asset Patterns for Genre-keyword.












TABLE 14







Keyword
Impressions/Expected(impressions)



















playoff
2.57259536



championship
1.340646812



cup
1.339433679



red carpet
1.733993006



academy award
2.098937084



grammy
2.339914967



football draft
5.4533442



final
1.331537746



all-star
1.515066396



live
1.071003292



super bowl
3.665313321



countdown
1.0587158



extreme
0.918094091



draft
1.676420518











Advertisement Response:


Advertisement response is a generalized measure of the concentration of a desired audience within a particular media asset pattern Mi. This may be calculated using several measures including the number of buyers reached by targeting each media asset, phone response per impression, the concentration of targeted audience, and others. In one embodiment, information about response may come from any subsystems of data feeds of advertiser data system 106.


Advertisement response may be represented as RΩ(P,M), where P is an advertiser's product and M is media. Advertisement response may be a measurement that is positive and monotonic with lift from advertising.

RΩ(P,M)=B(M)/I(M)

TV Advertisement Response/Ad Effectiveness Measures:


Multiple ad effectiveness measures may be used for helping to estimate response per impression or concentration of target audience per impression. One method may be Target Rating Points (“TRPs”) on Age-Gender.


Target Rating Points (TRPs) on Age-Gender:


Age-gender Target Rating Points may be used as a form of targeting. This form of targeting may be based on the number of persons who match the advertiser's target demographics divided by total viewing persons. A formula representing age-gender TRPs may be represented as:








r
A

(

P
,

m
i


)

=

100
·


τ

(


m
i

,
P

)


#


Q

(

m
i

)








where Q(mi) is a set of viewers who are watching TV media instance mi; where this viewing activity was recorded by Nielsen panel; where qk∈Q(mi); where #is the cardinality of a set; and where #rT includes persons that match on all demographics.


For example, a calculation of rA(P, mi) as 50% may mean that 50% of the people are a match to the desired demographics. Age-gender TRPs may also be calculated using Nielsen “Market Breaks,” such as gender=male|female and/or age=18-24, 25-34, 35-44, 45-54, 55-64, 65+.


Table 15, below, depicts an example of MAPType 59 with Ad Effectiveness of Target Rating Points (TRPs).














TABLE 15







Media







Asset




Pattern


MediaAssetPatternKey
sourcesegmentkey
TypeID
Correlation
MAPID
TRP




















ABC - The Silence of
110356
59
0.090847
24240093
0.231977


the Lambs


ABC - The Simpsons
110356
59
0.01147
24242989
0.333813


ABC - The Singing Bee
110356
59
0.182083
24240287
0.29886


ABC - The Soloist
110356
59
−0.26161
24240305
0.253884


ABC - The Stellar
110356
59
−0.04318
24240151
0.340155


Awards


ABC - The Stepford
110356
59
0.273387
24245805
0.305246


Wives


ABC - The Steve
110356
59
0.66973
24243515
0.511859


Harvey Show


ABC - The Steve
110356
59
0.44268
24242061
0.434906


Wilkos Show


ABC - The Suburbans
110356
59
0.714196
24239773
0.553664










Phone Response Per Impression:


When a TV advertisement is run with a 1800 number, it may be possible to match the phone responses on specific 1800 numbers back to the advertisement that was placed. This data may be used to track sales due to the TV advertisement. A specific method may use a series of hour lag terms to predict the number of phone-calls that would be generated on a given hour.


The method of the present disclosure exposes hour and day-lag terms for historical phone response, and then trains a system to predict a probability of phone response from an upcoming media spot. The method of the present disclosure may be represented by the formulas:








r
F

(

P
,

m

i
,
T



)

=



j



CALL



(

m

j
,
T


)



I

(

m

j
,
T


)











r
B

(

P
,

m

i
,
T



)

=



j


w
*


r
T

(

m

T
,
j


)







where CALL(mj,T) are the number of calls from airing Mj,T.


Table 16, below, depicts an example of: Media Asset Pattern Type 38—Station—Day—Hour with Ad Effectiveness equal to Phone Responses Per Impression for a Life Insurance product, including a selection of scores for CNN.
















TABLE 16





MediaAssetPatternKey
sourcesegmentkey
MediaAssetPatternTypeID
MAPID
Responses
ImpressionsScored
AllocatedResponses
RPM






















CNN - M - 4
10105
38
2244019
49
704008
52.50
74.58


pm


CNN - Su -
10105
38
2244044
18
450867
26.44
58.64


2 pm


CNN - Th -
10105
38
2244052
55
628320
62.47
99.42


12 pm


CNN - Th -
10105
38
2244058
41
651779
49.84
76.46


4 pm


CNN - Th -
10105
38
2248057
44
635173
52.83
83.18


6 pm


CNN - Tu -
10105
38
2244075
47
561477
60.93
108.51


6 pm


CNN - W -
10105
38
2252728
65
790970
75.08
94.92


3 pm


CNN - W -
10105
38
15323064
78
880141
91.55
104.01


5 pm


DEST - M -
10105
38
16838702
22
67779
47.93
707.09


2 pm


FNEW - M -
10105
38
2244807
22
576185
27.89
48.41


6 am









Table 17, below, depicts an example of a Media Asset Pattern Type 38—Station—Day—Hour with Ad Effectiveness equal to Phone Responses Per Impression for a Life Insurance product. Scores ordered by RPI descending.



















TABLE 17







MediaAsset










MediaAsset
source
Pattern
Model
Version



Impressions
Allocated


PatternKey
segmentkey
TypeID
ID
ID
Correlation
MAPID
Responses
Scored
Responses
RPM

























INSP -
10105
38
1
1
NULL
16838870
44
114204
47.05
411.94


Tu - 3


pm


INSP - M -
10105
38
1
1
NULL
16838852
11
30665
12.16
396.53


10 am


INSP -
10105
38
1
1
NULL
16838876
27
75963
28.16
370.66


W - 12


pm


INSP - M -
10105
38
1
1
NULL
16838854
35
101068
36.95
365.58


3 pm


INSP -
10105
38
1
1
NULL
16838874
29
84622
30.56
361.17


W - 1 pm


INSP - F -
10105
38
1
1
NULL
16838847
34
102853
36.32
353.08


3 pm


INSP -
10105
38
1
1
NULL
16838861
34
104691
36.03
344.18


Th - 2


pm


DEST -
10105
38
1
1
NULL
16838702
22
67779
47.93
707.09


M - 2 pm


INSP -
10105
38
1
1
NULL
16838878
33
102452
36.12
352.54


W - 3 pm


INSP -
10105
38
1
1
NULL
16838868
23
72138
25.93
359.42


Tu - 12


pm


INSP - F -
10105
38
1
1
NULL
16838846
31
102531
34.45
336.02


2 pm


INSP - F -
10105
38
1
1
NULL
16838844
11
36509
14.54
398.34


10 am


INSP -
10105
38
1
1
NULL
16838877
29
97157
30.21
310.90


W - 2 pm


OWN - F -
10105
38
1
1
NULL
16839819
37
124507
38.75
311.23


3 pm


SYFY -
10105
38
1
1
NULL
2267509
86
291972
95.34
326.54


Th - 12


pm


INSP -
10105
38
1
1
NULL
16838869
28
96224
29.74
309.09


Tu - 2


pm










Buyer Ratings:


Buyer targeting may look for media that has a high rate of observed buyers per impression, and targets those programs. An algorithm that may not be trained by itself, such as a self-learning algorithm and/or recursive algorithm, may score a percent of buyers observed in each media, which may be referred to as “buyer ratings.” The following expression defines buyer ratings.








r
C

(

P
,

m

i
,
T



)

=



j



B

(

m
j

)


I

(

m
j

)







Table 18, below, depicts an example of a Media Asset Pattern Type 47—Station-Program Buyers per impression in the audience (SourceViewPct).














TABLE 18






Source
MediaAsset


Source


MediaAssetPatternKey
segmentkey
PatternTypeID
MAPID
Counts
ViewPct




















ABC - Masters Report
110356
47
24391966
8
0.011834


2012


ABC - Maury
110356
47
24390571
60
0.011121


ABC - MDA Show of
110356
47
24392333
2
0.004651


Strength


ABC - MEGASTUNTS:
110356
47
24392638
28
0.007943


Highwire Over Niagara


Falls - Live!


ABC - Michael
110356
47
24390572
21
0.012567


Jackson: BAD25


ABC - Mirror Mirror
110356
47
17083484
3
0.014085


ABC - Miss Augusta
110356
47
24392664
2
0.019802


Christmas Fantasy


Parade


ABC - Missing
110356
47
17124974
76
0.00693


ABC - Modern Family
110356
47
17082109
125
0.005773









Table 19, below, depicts an example of a Media Asset Pattern Type 47—Station—Program Buyers per impression, sorted in order of highest buyers per impression programs to lowest for Life Insurance Product. A variety of religious programs show up as having high buyers per impression.














TABLE 19







Media Asset






Source
Pattern Type


Source


MediaAssetPatternKey
segmentkey
ID
MAPID
Count
ViewPct




















WBIH - Times Square
110356
47
24408592
13
0.039275


Church


WBIH - North
110356
47
24403807
26
0.031325


Jacksonville Baptist


Church


WBIH - Day of
110356
47
24406111
18
0.029412


Discovery


BET - Redemption of a
110356
47
24391388
18
0.027231


Dog


WBIH - Truth That
110356
47
24406620
12
0.026906


Transforms with Dr. D.


James Kennedy


WBIH - Wretched with
110356
47
24406853
12
0.025641


Todd Friel


WBIH - Inside the
110356
47
24403800
16
0.025276


Wildside


WBIH - First
110356
47
24408336
14
0.024138


Presbyterian Church


WBIH - Gospel
110356
47
24402598
13
0.023508










High Dimensional Demographic Matching:


In one embodiment, demographic match across 3,000 variables between an ad product buyer and each media asset pattern may also be used. Similar to age-gender matching, demographic mapping may use a thousand times more variables and a different match calculation due to the high dimensionality. The demographic match between an ad product and media may be defined as follows:








r
E

(


P
_

,


M
_

i


)

=




P
_

+

·


M
_

i
+






"\[LeftBracketingBar]"



P
_

+



"\[RightBracketingBar]"


·



"\[LeftBracketingBar]"



M
_

i
+



"\[RightBracketingBar]"








where P is a vector of demographics representing the average buyer demographic readings, and M is a vector of demographics for the media placement.


Table 20, below, depicts an example of a Media Asset Pattern Type 24—Station—Program with Ad Effectiveness=High Dimensional Demographic Match between Buyers and Set Top Box Viewers of Program. Selection for DIY channel.












TABLE 20






Source
MediaAsset



MediaAssetPatternKey
segmentkey
PatternTypeID
Correlation


















DIY - Knitty Gritty
110356
24
−0.0029


DIY - Make a Move
110356
24
0.544038


DIY - Man Caves
110356
24
−0.12583


DIY - Marriage Under
110356
24
−0.28237


Construction


DIY - Massive Moves
110356
24
0.628383


DIY - Mega Dens
110356
24
−0.07638


DIY - Million Dollar
110356
24
−0.039


Contractor









Table 21, below, depicts an example of a Media Asset Pattern Type 24—Station—Program with Ad Effectiveness=High Dimensional Demographic Match between Buyers and Set Top Box Viewers of Program. Top several programs by correlation for a Life Insurance product.












TABLE 21






Source
MediaAsset



MediaAssetPatternKey
segmentkey
PatternTypeID
Correlation


















WE - A Stand Up Mother
110356
24
0.896803


TVGN - Angel Eyes
110356
24
0.869202


BBCA - Amazon Super
110356
24
0.849512


River


NGC - Tsunami: Killer
110356
24
0.834906


Waves


INSP - Wisdom Keys: The
110356
24
0.834243


Transforming Power of


Change with Mike


Murdock


TVGN - Safe Harbour
110356
24
0.828137










Web Spike Per Impression:


If TV broadcasts are aligned in time and geography with web traffic, the difference in web visits due to each broadcast may be calculated by comparing web activity a few minutes before and after the broadcast. These web spike effects may be highest within about 1 minute to about 5 minutes of an airing. Details on calculation of web spike per impression may be as follows:








r
F

(

P
,

m

i
,
T



)

=



j



Δ


W

(

m

j
,
T


)



I

(

m

J
,
T


)







where ΔW(mj,T)=W(mj,T,t,g)−W(mj,T,t,g) is the difference in web activity at time t2 vs t1, from the same geographic area.


Table 22, below, depicts an example of a Media Asset Pattern 69 Station—Day—Hour with Ad Effectiveness measure equal to Web Spike Response per impression. Table below is sorted in order of highest web spike response per impression to lowest for a different advertising product (identified by sourcekey=110401). This is a product that appeals to women 25-34. The top networks showing up for webspike response are Soap (SOAP), Comedy (Com), Discovery Health and Fitness (DFH).













TABLE 22





MediaAsset
Source
MediaAsset




PatternKey
segmentkey
PatternTypeID
MAPID
WPI



















SOAP - Su -
110401
69
17110544
0.00322


3 pm


COM - Tu -
110401
69
17110163
0.003025


1 pm


DFH - Tu -
110401
69
17110598
0.002895


11 am


DFH - W - 2 pm
110401
69
17110286
0.00273


DFH - M - 7 am
110401
69
17110172
0.002596


COM - W - 1 pm
110401
69
17110586
0.002539


DFH - M - 1 pm
110401
69
17110279
0.002291


COM - Th -
110401
69
17110381
0.002148


1 pm


COM - Tu -
110401
69
17110377
0.00211


12 pm


DFH - Th -
110401
69
17110816
0.00206


3 pm


COM - M -
110401
69
17110374
0.002018


10 am


DFH - Tu -
110401
69
17110065
0.001955


1 pm









The ad targeting algorithms, as shown below, may be a combination of one or more of: (i) ad effectiveness metric; and (ii) media asset pattern type. For example, stbheadmatch-station-day-hour may mean high dimensional match with set top box data using statistics on station-day-hours (e.g., CNN-Tues-8 pm's demographic match between target and viewing audience).


Table 23, bellows, shows the correlation between each ad effectiveness measure and a particular response per impression measure. For example, Media Asset Pattern Type 32-STBHead-Station-Day-Hour has a high correlation with buyers per million (0.8471) and is present 93.9% of the time.











TABLE 23





Feature
R
% present

















32-STBHead-Station - Day - Hour
0.8471
0.9391


40-Telesale-Station - Day - Hour-Local
0.8245
0.4775


60-STBHead-Station - Program Authority
0.7585
0.2385


5-MBDemo-Day of Week - Hour of Day
0.7552
1


39-Telesale-Station-Local
0.7498
0.7451


65-AgeGender-SpecialEvent-Station - Program
0.6964
0.0081


Authority


118-Reach-Station - Day - Hour
0.6597
0.2688


45-Sale-Station - Day - Hour
0.6471
0.8938


31-STBHead-Station - Rotation
0.6102
0.9391


59-AgeGender-Station - Program Authority
0.4901
0.2037


28-STBHead-Program
0.4801
0.5162


124-Reach-Program Authority
0.4544
0.465


30-STBHead-Hour of Day
0.4424
1


7-MBDemo-Hour of Day
0.4121
1


27-STBHead-Station
0.3886
0.9391


55-AgeGender-Program Authority
0.3771
0.5985


53-AgeGender-Station-Program
0.3262
0.153


58-Telesale-Station - Day - Hour
0.2793
0.802


46-Sale-Station
0.26
0.9087


51-AgeGender-Station - Day - Hour
0.2478
0.8313


6-MBDemo-Day of Week
0.2283
1


24-STBDevice-Program Authority
0.199
0.463


29-STBHead-Day of Week
0.1601
1


25-STBDevice-Program
0.1446
0.415


52-AgeGender-Station
0.1099
0.9009


57-Telesale-Station
0.1079
0.8702


33-USCensus-DMA
0.0162
0.8073
















TABLE 24







Feature performance for predicting future household impressions












Mean



Maptype
Present
abs
mean





I94 - STBHead Actual Airings Minus 7 Days
35%
14%
 0%


I95 - STBHead Minus 14 Days
33%
15%
 0%


I96 - STBHead Minus 21 Days
32%
18%
 1%


I97 - STBHead Minus 28 Days
31%
19%
 0%


I74 - STBHead Station - Day - Hour - Quarter
98%
24%
−5%


I77 - STBHead Weekpart - Daypart - Station -
 0%
26%
 2%


Program Authority - High Value


I87 - STBHead Current Quarter
98%
26%
−4%


Station - Day - Hour


I32 - STBHead Station - Day - Hour
96%
29%
−12% 


I90 - STBHead First Airings Station -
78%
29%
−3%


Program Authority


I99 - STBHead Actual Airings Prior
56%
30%
−8%


Station - Program - Hour


I86 - STBHead Current Quarter Station -
85%
31%
 2%


Program Authority


I60 - STBHead Station - Program Authority
76%
33%
−2%


I61 - AgeGender Local Station - Day - Hour
92%
34%
−1%


I31 - STBHead Station - Rotation
96%
34%
−12% 


I82 - AgeGender2 Station - Day - Hour
92%
34%
 2%


I51 - AgeGender Station - Day - Hour
92%
36%
 1%


I98 - AgeGender2 Current Station -
36%
37%
−5%


Program - Hour


I63 - AgeGender Local Station -
72%
41%
 7%


Program Authority


I27 - STBHead Station
96%
43%
−7%


I59 - AgeGender Station - Program Authority
69%
46%
15%


I75 - STBHead Program Authority - Quarter
90%
46%
−2%


I53 - AgeGender Station - Program
45%
49%
21%


I78 - AgeGender Weekpart - Daypart -
 3%
50%
24%


Station - Program Authority - High Value


I52 - AgeGender Station
94%
52%
15%


I28 - STBHead Program
78%
52%
−2%


I66 - STBHead Station - Program Authority -
 0%
59%
37%


High Value


I76 - AgeGender Program Authority - Quarter
73%
60%
−9%


I65 - AgeGender Station - Program
 6%
62%
39%


Authority - High Value


I55 - AgeGender Program Authority
77%
63%
−7%


I30 - STBHead Hour of Day
100% 
71%
−28% 










Properties of TV Ad Targeting Algorithms:


One element affecting an ad effective metric's ability to be used may be their sparsity. The most sparse data may be STB buyer data, which may be known persons who have bought the advertiser's product, and are also detected watching a particular program. The probability of detection of these customers may be small.


One key reason for sparsity may be because each person must be matched in both STB data and advertiser data.


High dimensional demographic matching may not be as impacted by sparsity because it may aggregate all STB data into a demographic vector, and then may match using this vector. By converting to a demographic vector, it may be possible to eliminate the need for “cross-domain” person-to-person linkage.



FIG. 3A depicts an analysis of the three major classes of ad effectiveness metric: (a) demographic match, (b) phone response per impression (“RPI”), and (c) buyers per impression (“BPI”) versus the size of media being scored. The y-axis may indicate the correlation coefficient between the predicted phone responses and actual phone responses in the future. The x-axis may indicate the number of impressions generated by the media that is being scored. Each data point may indicate a quartiled set of airings, with their correlation coefficient for predicting future phone response. A linear fit may be added to each set of points to provide an idea of the accuracy trend for that ad effectiveness metric versus impressions.


As shown in FIG. 3A, phone RPI performs very well and is sloped upwards, which may indicate that as an airing has more impressions, prediction improves. For large airings, such as around 50,000 impressions in size, the correlation coefficient may average about 0.6. However, for programs with fewer than 1,100 impressions, RPI prediction performance may degrade.


Demographic matching may have a shallower slope, as shown in FIG. 3A. Its prediction may improve with more impressions, but it may be out-performed on high impression airings by RPI. However, one differentiator of the demographic match method may be that the shallow slope means that it continues to show good prediction performance far down the list of airings, into very low impression airings. This may be an advantage for the demographic match method, and may indicate that the entire TV spectrum may be scored and used with this method.



FIG. 3A also depicts BPI. Because of the high sparsity associated with BPI, this method may be useful on airings over 600,000 impressions in size. However, the slope of BPI may be quite steep. It may be possible that BPI might out-pace RPI, and may be a more predictive variable with enough set top boxes and/or the right advertiser that is generating numerous purchases.


In terms of usable predictions (scoring airings with impressions such that prediction performance is above 0), in one exemplary, non-limiting embodiment, demographic match covered, e.g., 99% of all airings, RPI covered, e.g., 57% of all airings, and BPI covered, e.g., only 0.5% of all airings, as shown in FIG. 3B. Thus, the sparsity analysis may indicate that all three methods may be useful from an operational standpoint. In some embodiments, demographic matching may beat all methods on low impression airings (<6,000 impressions), RPI may be effective on medium impression sizes, and BPI may be incorporated on airings with >600,000 impressions.


Exemplary Robust Algorithm:


One benefit of the present disclosure is that the below described targeting algorithm is able to use all of the above-described data and methods which allows for a “hyper-targeted” TV campaign. In order to build a combined algorithm, various problems introduced by the different metrics and range of each algorithm may be overcome. Further, the combined algorithm may be able to select features that are most predictive, and may be trained.


Model:


In one embodiment, a model consistent with the present disclosure may receive all of the available media asset patterns mi,t and ad effectiveness measures rα(mi,t). The model may also use them to predict the ad response per impression RΩ(Mi). This may include a supervised learning problem, as ad effectiveness information may be available for every airing, and thus, the system may be trained to predict the quantity based on historical examples. The model of the present disclosure may include a stacked estimator where each ad effectiveness model rα(mi,t) is an expert, and the assembly is trained to predict ad response RΩ(Mi).








R
Ω

(

M
i

)

=


Z

-
1


(

y
,

µ
Ω

,

σ
Ω


)







y
=



t



w
t



x
t










x
t

=

Z

(



r
t

(

m
t

)

,


µ
t

,

σ
t


)





The predictors xt and ad response target y=Z(RΩ,μ,σ) may be standardized, as discussed below. In order to handle so many different variables, the model may be able to standardize the different variable and may select the variables that are most useful for predicting its target to avoid over-fitting.


Variable Standardization:


In one embodiment, different ad effectiveness variables, such as telephone response per impression (RPI), buyers per impression (BPI), and demographic match, may be used. Each of these variables may have a different set of units. In order to handle these different scales, variables may be transformed, as follows:

xt=Z(rt);y=Z(RΩ);Z(a)=(a−μ)/σ


When training the system to predict standardized target y for each ad effectiveness predictor xt, each predictor may be effectively measuring the relationship between a change of a unit standard deviation in its distribution, to what that translates into in terms of standard deviations of movement in the target variable. This may have several useful properties, such as no constant terms, interpretability, and/or usability.


A constant term may be in effect removed and the co-variance may be measured. The constant term may be “added back” later when the prediction is converted back into target unit. Interpretability may allow standardizing variables on the same scale. When estimating weights, weights in order of magnitude may be read off, and thus, variables that are contributing most to the prediction may be seen. Usability may allow users to enter their own weights if they have some domain knowledge. Because of standardization, w=0.4 intuitively means that 40% of the decision may be based on this variable.


Constraints Due to Ad Theory:


There may be certain constraints that may be imposed on the model due to experimental findings from advertising theory. Ad theory suggests that as the traits of the ad match the product more, response to advertising should increase. Thus, the following propositions for ad effectiveness metrics may be: (1) ad effectiveness ∀i: xiy>0 (since each ad effectiveness metric may be positively correlated with ad response); and (2) given a model predicting ad response y=Σwtxt∀t: wt≥0, the effect of improved ad effectiveness may be zero or positive on ad response.


Minimum Weight Constraints:


In order to be consistent with the above-mentioned propositions, a positivity constraint in weights may be:

wt≥0

Sum of Weight Constraints:


For reasons of robustness in production, it may be desired to ensure that predictions do not extrapolate higher or lower than a range of values that has been previously observed. For example, a weight of 2 may allow the system to predict outside of the range of the ad response variable. To ensure the sum of weight constraints, all weights may sum to 1. As a result of this additional constraint, a formula may be:

1≥wt≥0∧Σt=1Twt=1  (2)

Low Data Behavior/Variable Participation Thresholds:


Each media asset pattern may cover a certain number of historical airings. For each media asset pattern, m, the sum the number of impressions observed may be I(m). Accordingly, the ad effectiveness measures may be unreliable on small amounts of data. Bayesian priors may be used to “fill-in” performance when there is less information available, modifying the ad effectiveness score as follows:

r=e−α·I(m)·r+(1−e−α·I(m)rPRIOR


where α is a parameter that governs how many impressions are collected for the posterior estimate to be favored more heavily than the prior.


However, Bayesian priors may be incorrect and may involve creation themselves. Since there may be hundreds of thousands of variables per product (not to mention hundreds of products), a large number of parameters may be set. Thus, an effect of poorly set priors may be significant as they cause variables that may have been good predictors to be spoiled, and the training process to be unable to weight them properly.


The system of the present disclosure may be able to work reliably with minimal human intervention. Thus, the system may be trained using participation thresholds. IMIN may be defined as the minimum impressions allowed on a particular media asset pattern. If a media asset pattern fails to meet this threshold, it may be converted to a missing value, and thus, does not participate further. The prediction formula for handling missing values may be defined as:

if I(mi,t)<IMIN∨σt=0 then wt=0;xt=MV

Missing Value Handling:


In certain embodiments, a particular media asset pattern may be missing and/or otherwise may be unable to report a value. For example, a system may not have enough data on a program to be able to provide a prediction. When this happens, the system may use a more general media asset pattern type, such as the station, to provide a prediction. Missing value handling may allow the system to operate in cases where a variable is not available and/or a variable is zeroed out, and missing value handling may allow other variables that are present to be used to create a prediction.


For production robustness, media asset pattern types may be defined with small weights, so that if there is a failure then the system may default to one of these more general media asset pattern types. For example, if station-day-hour is undefined, then station may be defined but at a very low weight. Thus, a significant weight may not be given to missing values.


Transforming into Target Units:


The standardized predictions may be converted into the original units. This may be performed by inverting the z-score transform

Z−1[y]=yσjj


where j is the ad effectiveness measure that is being reported. The Z−1 transform may be similar to performing a programming language cast operation into the appropriate units.


Training Algorithm:


Weight training may use a subspace trust-region method that is designed to operation for values 0 to 1 and sum of weights=1 constraints, as shown below:








w
t


min

E

=

min




i



[


(


1


Σ

t
=
1

T



w
t








r
=
1

T



w
t



x
t




)

-

y
*


]

2











1


w
t


0






t
=
1

T


w
t



=
1







If



x
t


=


MV


then



w
t


=
0





A forward-backward selection algorithm may be used to select new features to include in the model.


Different Target Value Types:


The Scoring Service can score response per impression (tratio). It can also predict Impressions, Cost Per Impression (predicted price), (phone) Response Per Impression, Web Response per impression, TRP (target rating points) and others. The list of target value types supported by the system are shown in Table x. In each case, the system uses the common set of media asset patterns defined earlier, with the ad effectiveness metric also defined earlier, to predict the target metric of interest.









TABLE 25







Target value types supported by Scoring Service










TargetValueTypeID
TargetValueType
MinValue
MaxValue













1
TRatio
−1
1


2
RPI
0
NULL


3
SourceViewPct
0
1


4
Impressions
0
NULL


5
CPM
0
NULL


6
Cost
0
NULL


7
TRP
0
NULL


8
TRPImpressions
0
NULL


9
TRPTImpressions
0
NULL


10
ReachPct
0
1


11
WPI
0
1


12
SourceViewMinutesPct
0
1









For example, in order to predict Impressions, the system has expected Impressions defined for each media asset pattern type defined earlier. The system then performs a linear combination of its weighted features to predict upcoming impressions.


Exemplary Weight Training for Forecasting Impressions:


An example forecast is below for the case of impressions. Impressions don't need to undergo standardization and so the example is fairly simple. Let's say that we're trying to estimate the impressions for media instance Mi=(“Little House on The Prairie”, Hallmark, Sun 6 pm, Jun. 9, 2013). The Media Asset Pattern Types that match this airing are shown in Table 26A and 26B below:


Exemplary Media Asset Patterns and Weights:












TABLE 26A





Map
MediaAssetPatternKey




Type
MediaAssetPatternTypeID
Impressions
weight


















1
HALL
340,497



2
LITTLE HOUSE ON PRAIRIE
92,730


4
HALL - Sa-Su - 9a-8p
481,519


5
Sun - 6-9PM
164,671
.25


7
6-9PM
117,448


14
HALL - Su - 6 pm
569,995


18
HALL - Su - 6 pm
194,377


27
HALL
276,393


28
Little House on the Prairie
221,556


30
6-9PM
281,602


31
HALL - Sa-Su - 9a-8p
403,137


32
HALL - Su - 6 pm
490,169
.25


37
HALL
264,917


38
HALL - Su - 6 pm
395,824


45
HALL - Su - 6 pm


46
HALL


47
HALL - Little House on the Prairie


49
HALL



















TABLE 26B





Map





Type
MediaAssetPatternKeyMediaAssetPatternTypeID
Impressions
weight







51
HALL-Su-6 pm
747,144



52
HALL
403,255



55
Little House on the Prairie
171,506



57
HALL
232,439



58
HALL-Su-6 pm
290,595



59
HALL-Little House on the Prairie
320,361
.25


60
HALL-Little House on the Prairie
261,492



61
National-HALL-Su-6 pm
725,637



63
National-HALL-Little House on the Prairie
290,635



74
HALL-Su-6 pm-Q2
447,017



75
Little House on the Prairie-Q2
201,296



76
Little House on the Prairie-Q2
161,460



82
HALL-Su-6 pm
809,827



83
HALL-Little House on the Prairie
297,056



84
HALL-Little House on the Prairie




85
HALL-Su-6 pm




86
HALL-Little House on the Prairie-Q22012
232,881
.25


87
HALL-Su-6 pm-Q22012
344,353



89
HALL-Su-6 pm-Week 23
553,533









In one embodiment, given that there may be weights on Maptypes 86, 59, 32, and 5 with 0.25 weight each, this results in the following:

Forecast Impressions=(164,671*w1+490,169*w2+320,361*w3+232,881*w4)/sum(w1 . . . 4)=264,971


Also, assuming that the actual impressions from that airing are ultimately found to be equal to: Actual=292,497, then error can then be calculated as below:

Error=(Forecast−Actual)=27,527


Based on hundreds of thousands of examples of forecasts and actuals, the system may be trained to adjust its weights to minimize forecasting error. It may also be possible to implement variable selection process to iteratively add variables and determine if they improve the fit, and then attempt to remove variables is a similar manner to determine if there is redundance (forward-backward algorithm).


Exemplary Fatigue and Pod Adjustments During Training:


One of the objectives of the present disclosure is to accurately predict a Response Per Impression metric for a future TV broadcast. One challenge is that campaigns are rarely starting for the first time. Often the advertiser has aired their commercial on a range of different networks, and this has caused their commercial to create fatigue on these different networks.


Previous airings cause a variety of challenges for training a model to estimate future Response Per Impression. Historical data on response per impression (eg. phone response) will be distorted because of low fatigue on early airings, and high fatigue on later airings.


For example, the advertiser may have bought “Wheel of Fortune” heavily in the past. When a model is trained to predict Response Per Impression, the historical “Wheel of Fortune” will include data from when “Wheel of Fortune” was first being bought, and so the historical performance may over-estimate the performance that it may be possible to achieve if “Wheel of Fortune” is purchased today.


In order to account for fatigue, it may be desirable to adjust historical airing performance to “reverse out” the impact of fatigue. One example of how to do this is to adjust historical Response Per Impression estimates per below:

RPI_historical=RPI_historical*ln(airingcount+1)


The above fatigue adjustments should be used for ad effectiveness metrics which are related to human response, such as phone response per impression, web response per impression, and the like. Fatigue adjustments aren't needed for ad effectiveness metrics which aren't affected by human response, such as buyers per impression, or age-gender TRP estimates. These latter metrics will be the same whether or not the ad has aired in these spots previously.


Another factor which can make it difficult to predict future RPI performance is variation in historical pod position. Often media buyers negotiate rotations and may be agnostic to particular pod positioning. The pod that the ad airs in has a dramatic impact on response from the ad. The first pod has highest response, and the later the ad appears in the commercial break, the lower is the response. For the 5th ad in a commercial break, performance is just 30% of the 1st ad. This is a huge performance change, and a major variable which needs to be taken into account. One example for how to take this into consideration is to estimate RPI as a function of pod position, and then to adjust as below:


Table 27, below, shows RPI position adjustments empirically measured in a live TV campaign.














TABLE 27





% through

pod-
Pod-
Pod-
Pod-


pod
all
size >=3
size >=5
size >=7
size >=9







20%
100% 
100% 
100% 
100% 
100% 


40%
87%
87%
89%
93%
75%


60%
74%
72%
54%
78%
99%


80%
52%
52%
43%
63%
50%


100% 
22%
19%
13%
12%
10%









It is then possible to calculate an RPI-position1-equivalent metric by adjusting the historical RPI metrics as follows:

RPI_historical=RPI_historical(1)/RPI_historical(pod)

Exemplary RPI Adjustments During Training:


Response per impression metrics that are divided by impressions can be volatile when there are few impressions. In many cases it is possible to log-transform the RPI metric being estimated to make it robust to these outliers. This often results in far better accuracy than leaving the RPI metric un-normalized.

RPI_historical=ln(RPI_historical)

Exemplary Weights on Specific Media Asset Patterns:


A weight may be applied to an entire class of media asset patterns. For example, CNN, NBC, BRAVO, may all be weighted the same amount, and additional data encapsulated by an ad's effectiveness on CNN, NBC, and BRAVO may vary. An example of this is shown in Table 26, which describes the training process in detail. Table 26 shows an example where CNN-Tues-7 pm, CNN-Tues-8 pm, etc, all receive a weight of 0.5. The RPI score for each of these different times can of course be different, and in the example, CNN-Tues-8 pm has the highest RPM (0.5).


In one embodiment of the present disclosure, knowledge of a specific media pattern (e.g., CNN) that is equal to a value may be important for predicting an ad's effectiveness (see Table 1-3). For example, a media asset pattern of a program may be set to a weight of, e.g., 0.4. However, when the program is “The Academy Awards,” the weight may be set to 1.0. In one embodiment, special media asset patterns may be set up to cover a specific media asset pattern, and the other media asset patterns may be set to null. Table 1-3 shows an example of this: CNN-Tues-8 pm receives a weight of 0.5. This indicates that the system should “pay greater attention” to the Station-Day-Hour MAPType when the value is equal to CNN-Tues-8 pm. This is also equivalent to creating a new Media Asset Pattern Type which is equal to the specific MAP string which is being differentially weighted.


Media Asset Pattern Dummy Variable Mining:


Mining to find these special media asset patterns may involve a rule extraction algorithm. For example, the algorithm may search various search spaces, i.e., media asset patterns (station, program, genre, day, and hour). Mining may use the systems in an environment, such as the environment shown in FIG. 1A, to receive and analyze the airings. In mining, the system may identify predicates which have a high support, meaning they have been tested and found to be true on a large number of samples, and have a high confidence, meaning that the probability of a conversion or purchase is high.


The system may generate every possible combination of a media asset pattern. By working from most general media asset patterns first, the system may ensure adequate “support.” Further, the system may form children media asset patterns from the general asset patterns. For example, generated media asset patterns may include: (DIY-Mon-9 pm-11 pm-Documentary); (DIY-Mon-9 pm-11 pm); (DIY-Mon); (DIY); (Documentary); (DIY-9 pm-11 pm); (Mon-9 pm-11 pm); (Mon); and (9 pm-11 pm). The system may also remove generated media asset patterns that are redundant, unlikely to be usable, and/or unlikely to be valuable, such as generated media asset patterns (Mon-9 pm-11 pm); (Mon); and (9 pm-11 pm).


There may also be constraints on a search space. Media asset patterns may be set to not allow collapsibility, which may occur if a child media asset pattern (e.g., ID-Tuesday-8 pm) is predictive, and the parent media asset pattern (e.g., ID-Tuesday) is also predictive. Thus, a child media asset pattern may be deleted (or “collapsed”), and the parent media asset pattern may be used. This may minimize a number of media asset patterns that need to be comprehended by human analysts and/or a machine learning algorithm consistent with this disclosure. This may also allow media asset patterns to work at as general a level as possible.


An example implementation may be set as follows: a media asset pattern is significant at p<0.1 level; orders from media asset pattern>=1; cost per card from media asset pattern<$10,000; and/or above average performance only.

E[Response|Media Asset Pattern]>E[Response].


An example result may be shown as shown in Table 2 below:


Table 28, below, depicts how weights can be applied to Media Asset Pattern Types as a whole, where all MAP strings receive the same weight.











TABLE 28






Ad Effectiveness estimate (calculated




demographic match between buyer


Media Asset Pattern
demographics and viewer demographics)
weight

















CNN-Tues-7 pm
0.2
0.5


CNN-Tues-8 pm
0.5
0.5


CNN-Tues-9 pm
0.2
0.5


CNN-Tues-10 pm
0.2
0.5


CNN-Tues-11 pm
0.2
0.5









Table 29, below, depicts how weights can be applied to specific Media Asset Patterns. Different MAP strings can receive different weight.











TABLE 29






Ad Effectivness estimate (calculated




demographic match between buyer


Media Asset Pattern
demographics and viewer demographics)
Weight

















CNN Tues-7 pm
0.2
0.5


CNN-Tues-8 pm
0.5
0.9


CNN-Tues-9 pm
0.2
0.5


CNN-Tues-10 pm
0.2
0.5


CNN-Tues-11 pm
0.2
0.5

























TABLE 30














cost











per


Media
M


Resp




card


Asset
Media
R

p-
Pattern

Potential-O
Potential-R
(best


Pattern
Cost
Responses
Placements
value
Type
Arity
Orders
Responses
case)
























ENN-
3123.75
6
12
0.024496
SWHD
4
1
6
1561.875


Weekend-


9 pm-


11 pm-Sun


GC-
2184.5
5
12
0.073612
SWHD
4
1
5
1092.25


WeekDay-


11 pm-


3 am-Tue


TWC-
1020
2
2
0.049254
SWHD
4
1
2
340


Weekend-


3 pm-6 pm-


Sun


HGTV
75264.1
54
60
5.51E−29 
S
1
672
9072
9408.012


ID
177458.7
285
364
2.9E−114
S
1
3024
47880
8066.307


MLC
40200.75
39
162
0.062159
S
1
504
6552
6700.125


NGC
201144
229
994
0.024503
S
1
2352
38472
9142.909


MLC-
1721.25
6
11
0.015742
SWH
3
24
144
860.625


WeekDay-


11 am-


3 pm


NGC-
24059.25
51
162
0.001633
SWH
3
120
1224
3007.406


WeekDay-


11 am-


3 pm


NGC-
14318.25
40
56
5.31E−15
SWH
3
48
960
2863.65


WeekDay-


9 pm-


11 pm


WBBH-
361.2498
6
1
0.05
SWH
3
24
144
180.6249


Weekend-


5 am-7 am


KCOY-
8653
11
38
0.088364
SW
2
96
528
2163.25


Weekend


Documentary,
81736
338
282
0.05
G
1
0
0
2818.483


General


Documentary,
106.25
11
8
0.05
G
1
0
0
26.5625


News


Sports
19779.5
38
98
8.98E−05
G
1
0
0
6593.167


Commentary









As shown in FIGS. 6A, 6B, and 6C, the generated media asset patterns are shown being tested over time. The dots of the graphs indicate dates when the generated media asset pattern was effectively tested in a live TV campaign by having an airing that matched the pattern. Each of these airings may be an opportunity to collect more data on the media asset pattern. After generating the media asset patterns, as shown in FIGS. 6A, 6B, and 6C, media asset patterns may be employed to determine which of the media asset patterns may be set up as a dummy pattern, and which may be included as another media asset pattern type.


Special Branching Structure and High-Order Features:


The model can be improved by adding structure to detect a variety of conditions. In one embodiment these conditions are implemented using a decision tree in which given a certain condition, a weighted model is executed. However these conditions could also be implemented as features themselves, incorporated as interaction terms or the like. Special conditions may include:

    • 1. First-runs: Premieres like Walking Dead often generate 3-4 million impressions in a premiere, but in a second run only 600,000. This is a huge difference in impressions, and drives most of the error. In one embodiment, special branching logic may be used for first-runs now, so that they are recognized and then estimated based on historical first-runs. A branch may be implemented as

      if time-since-first-airing<1 then <premiere model>
      • where <premiere model> is a weighted model described above and where the features are selected.
    • 2. Local airing: Local airings can obtain value from a variety of local media asset pattern types.


Table 31, below, shows trained weights for local airings, and table below that shows performance predicting local response per impression for two different advertisers.
















TABLE 31








Input








Variable
id
w
cadaline
cadaline_test
wexpert
wadaline
present





55-AgeGender
33
0.002806
0.203434
0.228209
0.15155
0.162887
0.645773


Program


Authority


21-
21
0.150112
0.210645
0.244288
0.151548
0.104872
0.674908


STBDevice


Station -


Rotation


36-STBHead
28
0.525256
0.270852
0.256366
0.144855
0.216903
0.357569


Local DMA -


Station - Day -


Hour


74-STBHead
37
0.369
0.265005
0.249109
0.124555
0.179191
0.749886


Station - Day -


Hour - Quarter


83-
44
0.690138
0.28115
0.358626
0.123371
0.228219
0.36516


AgeGender2


Station -


Program


Authority


32-STBHead
27
0.688419
0.257169
0.236305
0.109395
0.167552
0.7501


Station - Day -


Hour


82-
43
0.083145
0.084368
0.116748
0.085555
0.050617
0.31611


AgeGender2


Station - Day -


Hour


SourceViewPct85
58
0.678007
0.182726
0.21657
0.080691
0.101695
0.76106


80-STBHead
42
0.641174
0.193971
0.047278
0.019383
0.09252
0.137607


Local DMA -


Station -


Program


Authority


SourceViewPct47
56
0.625855
0.214057
0.200428
0.005974
0.136449
0.370292


78-AgeGender
41
0.855387
0.480057
0.525905
0.002717
0.473033
0.001042


Weekpart -


Daypart -


Station -


Program


Authority -


High Value


SourceViewPct84
57
0.322128
0.157052
0.205061
0.000404
0.098444
0.641496


76-AgeGender
39
0.509407
0.217669
0.239749
0.000001
0.172282
0.643527


Program


Authority -


Quarter


59-AgeGender
34
0.640022
0.180905
0.206033
0
0.151945
0.62225


Station -


Program


Authority

















corr
percent



Segment
corrw
logw
present







local
0.273461
0.188556
0.211168



sourcekey



110384



Local
0.251984
0.265557
0.036193



sourcekey



110356












    • 3. High demographic volatility: Some networks have a great deal of variation from week to week in terms of viewership and perhaps even their schedule of programs. As shown in Table 32, below, FS-1 is a sports network and the particular sport shown in each weekly timeslot changes every week. Basketball viewers and volleyball viewers are very different, and this shows up in the demographics of the viewers. For these “high demographic volatility networks”, features which use same-time-last-week, or even historical station-day-hour performance can be highly inaccurate, and it tends to be better to use features based around the Station-Program.





A branch may be created, as follows:

If tratio_network_volatility>0.21 then <high-tratio-volatility-model>


Where <high-tratio-volatility-model> is trained on airings which are on networks that have high tratio volatility. In practice, it may be expected that the features selected for the model above will tend to have more program-specific features.













TABLE 32





Date
Day
Impressions
Network
Program



















Aug. 31, 2013
3
761,342
Fox
COLL





Sports 1
FOOTBALL:






PAC 12 L


Sep. 7, 2013
3
1,000,501
Fox
COLL





Sports 1
FOOTBALL:






PAC 12 L


Sep. 14, 2013
3
543,084
Fox
COLL





Sports 1
FOOTBALL:






PAC 12 L


Oct. 5, 2013
3
444,578
Fox
COLL





Sports 1
FOOTBALL:






BIG 12 L


Oct. 19, 2013
3
1,499,663
Fox
COLL





Sports 1
FOOTBALL:






PAC 12 L


Oct. 26, 2013
3
710,916
Fox
COLL





Sports 1
FOOTBALL:






PAC 12 L


Nov. 2, 2013
3
192,953
Fox
FOX





Sports 1
SPORTS






LIVE L


Nov. 9, 2013
3
306,723
Fox
FOX





Sports 1
SPORTS






LIVE L


Nov. 16, 2013
3
234,935
Fox
FOX





Sports 1
SPORTS






LIVE


Nov. 23, 2013
3
193,520
Fox
COLL





Sports 1
FOOTBALL:






BIG 12 L


Nov. 30, 2013
3
1,026,377
Fox
ULTIMATE





Sports 1
FIGHTER






FINALE L


Dec. 7, 2013
3
149,952
Fox
FOX





Sports 1
SPORTS






LIVE L


Dec. 14, 2013
3
137,760
Fox
FOX





Sports 1
SPORTS






LIVE L


Dec. 21, 2013
3
122,551
Fox
FOX





Sports 1
SPORTS






LIVE L









As shown in Table 32, above, TV Network FS1 has high variability in viewership for its programs even during the same day of week, hour-of-day, and program name. Variability can also be caused when networks change their schedules (eg. showing volleyball, basketball, football, etc in the same timeslots). When there is high demographic volatility as above, forecasting viewership and response from the upcoming airing will be more accurate when using program-specific features.


Table 33, below, depicts exemplary low demographic volatility networks.












TABLE 33







absdiff_32minustra-
meandiff_32minustra-


callletters
stdevdiff
tioactual
tioactual


















DSNY
0.059737758
0.046014225
−0.008227945


DXD
0.062597609
0.047358082
−0.004374518


SONYETA
0.081600238
0.064690547
−0.014652289


ENCWEST
0.081625726
0.064803192
0.014160601


TNNK
0.08834976
0.066093817
−0.00068341


BOOM
0.092145548
0.069325094
−0.010345114


NKTN
0.09298583
0.072888674
−0.015737483


QVC
0.098509047
0.076902623
0.022356379


BET
0.099818146
0.078824512
0.002835602


GSN
0.106359947
0.079360001
0.010407444


NKJR
0.101681394
0.08343749
−0.00293748


HMC
0.107588397
0.084501056
0.010272793


HLN
0.114161717
0.085217182
0.019339856


HGTV
0.114381219
0.086356672
0.007490231


TWC
0.115132704
0.087603514
0.001213892


TCM
0.112659355
0.087656798
0.011851204


MTV
0.117015838
0.089119835
−0.006694463


RFD
0.118062793
0.091784897
−0.007267901
















TABLE 34





High demographic volatility networks


















FS2
0.381882208
0.311891721
−0.02898613


EPIX
0.388108476
0.318164344
−0.005403923


STARZCIN
0.388334105
0.319495054
0.068866594


HDNETM
0.392414522
0.319642416
−0.099978969


INDIE
0.396644462
0.329708841
0.009744889


BYUTV
0.408502593
0.330631201
−0.030426538


NUVO
0.422968523
0.338527025
0.01763275


AECN
0.420555876
0.346678381
−0.012042394


STARZCOM
0.424315761
0.350517543
0.037716248


AMC
0.446219442
0.352825329
0.02867856


MAVTV
0.430753303
0.359980424
−0.015734196


CNBCW
0.42843112
0.368438834
0.118018351


IFC
0.465177115
0.370091136
0.040695151


ENCO
0.447039619
0.371379583
0.037977942


LOGO
0.455418266
0.378725362
−0.009302438


UHD
0.465517888
0.394160019
−0.007067299
















TABLE 35





Low volatility station-programs





















ESPN
NBA Face to Face With
0.000131
0.075843
0.075843
−0.45279
−0.52863



Hannah Storm


SHOW
To Live and Die in L.A.
0.000129
0.016037
−0.01604
−0.14113
−0.12509


FX
Knock Off
0.000103
0.030574
0.030574
0.427313
0.39674


SHOWCSE
Even the Rain
9.95E−05
0.089048
−0.08905
−0.26051
−0.17146


GALA
Santo vs. el rey del crimen
9.83E−05
0.059348
−0.05935
0.154556
0.213904


SYFY
Messengers 2: The
9.02E−05
0.019637
−0.01964
0.571118
0.590755



Scarecrow


ESQR
Rocco's Dinner Party
8.55E−05
0.071287
−0.07129
−0.49515
−0.42387


ESQR
ROCCOS DINNER PARTY
8.55E−05
0.071287
−0.07129
−0.49515
−0.42387


TMC
The Advocate
5.80E−05
0.028745
0.028745
0.210809
0.182063


LIFE
To Have and to Hold
4.73E−05
0.006146
0.006146
0.335054
0.328908


5STAR M
Salvation Road
1.81E−05
0.127159
−0.12716
−0.03399
0.093165


FOXD
HOOTERS ANGELS 2011
7.16E−06
0.042774
−0.04277
0.242489
0.285263


FOXD
HOOTERS SNOW ANGELS
7.16E−06
0.042774
−0.04277
0.242489
0.285263


FOXD
Hooters' Snow Angels
7.16E−06
0.042774
−0.04277
0.242489
0.285263


FOXD
The Hooters 2011 Snow
7.16E−06
0.042774
−0.04277
0.242489
0.285263



Angels









Below is a sample of SQL code for calculating volatility by network select














select


-- a.sourcesegmentkey,









--bb.stationmasterid,



c.callletters ,



-- bb.DayNumberOfWeek, bb.hourofday,



stdev(a.correlation − b.correlation) stdevdiff,



avg(abs(a.correlation − b.correlation)) absdiff_32minustratioactual,



avg(a.correlation − b.correlation) meandiff_32minustratioactual ,



avg(a.correlation) tratiom32, avg(b.correlation) tratioactual



--a.correlation tratio32, b.correlation tratioactual



 -- *



 from



(select * from



[tahoma\sql2008r2].demographics.scoring.modelsourcemapscore



where mediaassetpatterntypeid=32



and not sourcesegmentkey like ‘%NC--%’



and sourcesegmentkey = ‘110402’



) a



inner join



(select * from



[tahoma\sql2008r2].demographics.scoring.map









where mediaassetpatterntypeid=32









) bb









on a.mapid=bb.mapid



and a.mediaassetpatterntypeid=bb.mediaassetpatterntypeid









inner join



(select * from



dw1.demographics.scoring.modelsourcemapscoreactuals









where not sourcesegmentkey like ‘%NC--%’









) b



on bb.StationMasterID=b.stationmasterid







-- and cast(cast(a.AirDate as date) as datetime) = b.airdate









and bb.DayNumberOfWeek = datepart(weekday,b.airdate) --



b.dayofweek



and bb.hourofday = b.hourofday



and bb.marketmasterid=b.marketmasterid



and a.sourcesegmentkey = b.sourcesegmentkey



inner join dw1.demographics.dim.station c



on b.stationmasterid=c.stationmasterid







group by


-- a.sourcesegmentkey,









--bb.stationmasterid,



c.callletters



--,bb.DayNumberOfWeek, bb.hourofday







order by









stdev(a.correlation − b.correlation) desc










The table below shows trained model for estimating RPI for an airing which has high demographic volatility. The system makes use of Buyers per million features to increase its accuracy. Table 36, below, shows the prediction performance on airings.
















TABLE 36








Input








Variable
id
w
cadaline
cadaline_test
wexpert
wadaline
present





SourceViewPct84
57
−5.25274
0.753682
0.765462
0.149844
0.97362
0.641496


SourceViewPct85
58
0.060485
0.69115
0.717313
0.149839
0.968607
0.76106


28-STBHead Program
25
−2.88135
0.667029
0.688489
0.149833
1.115365
0.46505


75-STBHead Program Authority -
38
1.316007
0.552701
0.651104
0.123854
1.050081
0.543583


Quarter


76-AgeGender Program
39
2.262887
0.487257
0.52321
0.121283
0.597223
0.643527


Authority - Quarter


32-STBHead Station - Day -
27
3.010398
0.539881
0.534069
0.094589
0.939228
0.7501


Hour


51- AgeGender Station - Day -
29
−2.81101
0.485359
0.477517
0.041236
0.512429
0.60378


Hour


55- AgeGender Program
33
−1.31578
0.50033
0.537834
0.038298
0.622985
0.645773


Authority


60- STBHead Station - Program
35
1.09807
0.634798
0.56089
0.032457
1.407408
0.62217


Authority


18- STBDevice-STB Station -
19
1.092676
0.366499
0.427077
0.030492
0.369149
0.168827


Day - Hour


53-AgeGender Station -
31
1.66064
0.49126
0.520857
0.030395
0.475935
0.099142


Program


65- AgeGender Station -
36
−1.04116
0.266688
0.422249
0.02721
0.32742
0.011334


Program Authority - High Value


24-STBDevice STB Station -
22
0.928707
0.464556
0.386469
0.007012
0.357844
0.124856


Program Authority


83- AgeGender2 Station -
44
1.639985
0.627654
0.666194
0.003657
0.601391
0.36516


Program Authority


96- STBHead Actual Airings
45
−0.25876
0.262946
−0.03297
0.000001
0.281401
0.079335


Minus 21 Days

















corr
percent



Segment
corrw
logw
present







pred full set
0.400229
0.083105
0.794018



national sourcekey 110356
0.44727
0.430632
0.117586



national sourcekey 110384
0.120526
0.2906
0.05616



national sourcekey 110424
0.303704
0.26144
0.016439



volatile tratio
0.71906
0.699078
0.025741



stable tratio
0.274205
0.290363
0.017348



national
0.43957
0.438388
0.190185



high national imps
0.424759
0.468252
0.003876



low national imps
0.333314
0.276243
0.019727



PMIC Dental Local
0.160301
0.188145
0.036193












    • 4. Syndication: Syndication on television refers to when re-runs of a program are broadcast on another network, and then distributed to a range of local stations. The local stations may or may not carry the syndicated program, creating a distribution footprint that can be fairly unique. Syndication is often priced more favorably than other national broadcasts. In order to estimate syndicated airings, a variety of syndication-specific branches and features are used. Syndicated programs can be thought of as comprising a hierarchy with “program” being the most general representation of the airing (eg. “Judge Karen's Court”). Syndication-network (eg. “SYN-CBSUNI—Judge Karen's Court”) is next in level of granularity. Syndication-network-program-daypart is the most granular. Each of these features can be used when predicting the response per impression from a particular airing.





It may be possible to create a special branch for syndicated airings as follows:

If <syndicated airing> then <syndicationmodel>



FIG. 9I depicts an exemplary embodiment of a series of programs, syndication programs, syndication sub-station program, and syndication sub-station program day/week.


Tables 37A-37C below depict examples of different features used for predicting syndicated airings: Maptype 83==syndicated-station-program; maptype 83==syndicated program; maptype 76==Program-quarter of year.












TABLE 37A





MediaAssetPatternKey
sourcesegmentkey
MediaAssetPatternTypeID
Correlation


















SYN-20THCTV - American Dad!
110356
83
−0.61966


SYN-20THCTV - Are We There Yet?
110356
83
−0.46726


SYN-20THCTV - Bones
110356
83
0.568095


SYN-20THCTV - Burn Notice
110356
83
0.604625


SYN-20THCTV - Century 20
110356
83
−0.05786


SYN-20THCTV - Century 21
110356
83
0.333567



















TABLE 37B





MediaAssetPatternKey
sourcesegmentkey
MediaAssetPatternTypeID
Correlation


















SYN - 'Til Death
110356
106
−0.61339


SYN - 30 Rock
110356
106
−0.62784


SYN - Access Hollywood
110356
106
0.3335


SYN - Access Hollywood Live
110356
106
0.274231


SYN - According to Jim
110356
106
−0.73037


SYN - America Now
110356
106
0.133193





















TABLE 37C








Model
Version



MediaAssetPatternKey
sourcesegmentkey
MediaAssetPatternTypeID
ID
ID
Correlation




















Judge Mathis - Q1
110356
76
1
1
0.805666


Judge Mathis - Q2
110356
76
1
1
0.786072


Judge Mathis - Q3
110356
76
1
1
0.776222


Judge Mathis - Q4
110356
76
1
1
0.78142









Table 38, below, depicts syndicated features and degree of predictiveness for estimating response per impression where RPI is phone response per impression.











TABLE 38





Maptype
corr
present %

















106-AgeGender2 Syndication Overall Station -
0.53
44%


Program Authority


75-STBHead Program Authority - Quarter
0.49
24%


83- AgeGender2 Station - Program Authority
0.48
43%


76- AgeGender Program Authority - Quarter
0.32
71%


TRP59
0.10
100% 


TRP
0.08
100% 


54- AgeGender Syndication Program
0.08
100% 


51- AgeGender Station - Day - Hour
0.04
100% 


TRP51
0.04
100% 


105- AgeGender2 Syndication Overall
0.03
29%


Station - Day - Hour


25-STBDevice-STB Program Name
(0.17)
24%









The table in FIG. 9J depicts trained weights for a syndication branch of model, where “WExpert are the weights.”

    • 5. High impression airings:
    •  Error tends to show a pattern by impression decile—so that there is high percentage error on the smallest airings, low error on medium sized broadcasts, and then an uptick in error on the biggest impression airings. Those big impression airings tend to be “destination programs” like “Price is Right”, “Revenge”, and so on. Although the uptick in error on these looks small (eg. only 20%) actually these are the airings that are producing most total error in each campaign. Therefore reduction on error here will dramatically increase campaign performance. The model may be broken so as to have branches for large-airing programs above 1 million impressions. For these programs, the variables selected tend to comprise network-program estimates, rather than time of day variables, since the programs carry the audience and not the other way around.
    • e. Below are variables selected for this model—yellow indicates station-program variables, and blue station-day-hour. Most of the variables (8/10) are station-program.











TABLE 39





Var
Pres
weight

















I77 - STBHead Weekpart - Daypart - Station -
 2%
22.124%


Program Authority - High Value


I74 - STBHead Station - Day - Hour - Quarter
100%
20.999%


I78 - AgeGender Weekpart - Daypart - Station -
 15%
16.872%


Program Authority - High Value


I75 - STBHead Program Authority - Quarter
100%
11.155%


I99 - STBHead Actual Airings Prior Station -
 89%
9.382%


Program - Hour


I98 - AgeGender2 Current Station - Program - Hour
 60%
8.682%


I65 - CompetitiveData Station -
 37%
6.234%


Program Authority - High Value


I82 - AgeGender2 Station - Day - Hour
100%
2.829%


I86 - STBHead Current Quarter Station -
100%
1.325%


Program Authority


I60 - STBHead Station - Program Authority
 89%
0.304%


I66 - STBHead Station - Program Authority -
 3%
0.044%


High Value


I51 - AgeGender Station - Day - Hour
100%
0.037%


I32 - STBHead Station - Day - Hour
100%
0.009%


I28 - STBHead Program
 78%
0.003%


I87 - STBHead Current Quarter Station - Day - Hour
100%
0.003%










FIGS. 9K-9L depict variable weights and percentages associated with the above table.

    • 6. Low Impression Airings
    •  As described above, the error pattern tends to be high percentage error on small airings, where this is in part due to the intrinsically small size of the airings. Nevertheless, it may still be desirable to reduce error on these airings, since it is conceivable that an advertiser might be executing a campaign using local cable, local broadcast, or small national networks. It may be possible to create another branch to cover these cases. For these small airings, their performance tends to be dependent very much on the time of day and network, rather than the particular program that is playing. For example, in order to estimate Military channel viewership, it turns out the best variables are the time of day—it seems that people watching this network really tend to tune into generic Military programming, rather than audiences looking for specific programming.
    •  A variable selection routine may be run for all airings with <50,000 impressions. This ends up automatically selecting features that are station-day-hour based, and not selecting station-program features.
    • FIGS. 9M-9N depicts the features that are being used. Please note the features in blue indicate that they are Station-day-hour based, and yellow are Station-program based. No color indicates not classified into either category. It is possible to see that 6/7 features are Station-day-hour. Only “high value” programs (present <1% of the time) require the use of Station-program feature, and the weight is relatively low.











TABLE 40





Var
Present
weight

















I94 - STBHead Actual Airings Minus 7 Days
24%
18.1204%


I97 - STBHead Actual Airings Minus 28 Days
23%
17.4835%


I51 - AgeGender Station - Day - Hour
77%
16.9061%


I87 - STBHead Current Quarter
89%
12.7661%


Station - Day - Hour


I95 - STBHead Actual Airings Minus 14 Days
23%
12.3543%


I74 - STBHead Station - Day - Hour - Quarter
89%
11.0287%


I32 - STBHead Station - Day - Hour
87%
3.8501%


I99 - STBHead Actual Airings Prior
40%
2.6417%


Station - Program - Hour


I82 - AgeGender2 Station - Day - Hour
79%
1.7760%


I77 - STBHead Weekpart - Daypart - Station -
 0%
1.3571%


Program Authority - High Value


I96 - STBHead Actual Airings Minus 21 Days
23%
1.3080%


I98 - AgeGender2 Current Station - Program -
31%
0.4054%


Hour


I61 - AgeGender Local Station - Day - Hour
77%
0.0025%










FIG. 10 depicts an example of a branched model.



FIG. 11 depicts an error analysis of impressions forecasting. This shows that the premiere and prime-time programs tend to generate most of the error in the system. Because of this, branches are created to detect prime-time and premiere episodes, and then a model is used which is specialized for operating on those cases. In practice large-impression TV airings tend to result in a model that selects more program-specific attributes.



FIG. 12 depicts an exemplary accuracy analysis on various conditions.


Exemplary Variable Selection:


Variable participation may be limited due to participation thresholds which remove variables, missing value handling, which enables the system to elegantly operate with missing features, and forward-backward selection, which aggressively removes variables that do not make a significant contribution to the model. FIGS. 4A, 4B, and 4C depict different selections of variables. For example, FIG. 4A depicts variables selected in cases in which all variables that are present are used, FIG. 4B depicts variables selected in cases in which missing values are allowed, and FIG. 4C depicts a comparison of the variables selected (and weights) versus the variable correlations. FIG. 5 depicts predicted ad response versus future responses per million impressions.


Exemplary Effects of Fatigue:


Extensive surveys and meta-studies of hundreds of publications have concluded that advertisement response shows diminishing returns when displayed to the same target audience over time. A version of the embodiment will take into account the decrease in performance during repeated exposures of advertising in the same positions, which may be referred to as estimates of “fatigue.”


One embodiment estimates fatigue as a function of individual advertisement exposures of persons participating using a panel. In this embodiment the viewers of a program are known and it may be possible to count the number of times the viewer had the TV on while the ad was on. This approach requires the existence of a panel and their viewing activity.


A second embodiment may estimate fatigue by counting airings delivered to the same program or station-time-of-day. This latter approach has an advantage in that it only requires an advertiser to keep a count of the number of airings in each media asset pattern. It does not require a panel or viewing activity in order to provide a fatigue estimate.


Another method is to use the number of historical airings in each media asset pattern and compare it to the phone response from that same media asset pattern. FIGS. 2A, 2B, and 2C depict response per impression for phone responders to television advertisements versus a number of repeat airings in the same station-day-hour. The response per impression decreases as a function of the log of the number of repeat airings.


Another method is to use the number of airings in media asset pattern and compare it to the web response from that media asset pattern. As the airing count increases, the web response should decrease. A Fatigue function can then be estimated and used to estimate the effect of fatigue (or of airing in the same media asset pattern).


Fatigue can also be estimated by examining set top box conversion rate versus number of exposures to an individual person. Set top box conversion rate can be calculated as the number of persons who converted (known buyers as provided by an advertiser) divided by the number of persons in the population. It may then be possible to count the converters/viewers for persons who have had 1 exposure, 2 exposures, 3 exposures and so on. FIGS. 2A and 2B depict, for two different products, person-level conversions per advertisement view. As indicated by FIGS. 2A and 2B, conversion rate declines as a function of the log of airings. FIG. 2C depicts phone calls per million impressions in response to an embedded phone number in a TV advertisement observed after placing the advertisement in the same station-day-hour 1, 2, 3, . . . , 20+ times. As indicated by FIG. 2C, the number of phone calls may decline relative to a log of the number of previous airings.


Fatigue with Airing Counts and Co-viewing:


An airing count for media A(m) may be calculated as a count of known airings placed into media slot m. This airing count, however, may fail to take into consideration co-viewing activity. For example, an advertisement may have been run ten times on, e.g., the Military Channel's “Greatest Tank Battles.” A media buyer may wish to run the advertisement on the Military Channel's “Top 10 Aircraft,” which has had zero airings. The media buyer may have assumed such a run would avoid a decline in the advertisement's performance. However, the media buyer may be under-estimating the effective frequency.


For example, Military Channel viewers may be considered highly “insular” in their viewing habits. Thus, by airing the media buyer's advertisement in Greatest Tank Battles ten times, the media buyer may have effectively hit much of the same audience that would be viewing Top 10 Aircraft. Therefore, calculating the frequency of advertisement viewing that incorporates knowledge of co-viewing probabilities may be an important consideration.


Given knowledge of co-viewing probabilities, the probability that viewers will not have observed the advertisement may be calculated. The co-viewing probabilities may be calculated from, for example, set top box data. Thus, an effective airing rate may be represented by the following formula:

A*(mj)=max A(miPr(mi,mj)


In order to account for the impact of Fatigue, expected response per impression, rpiΩ, may be equal to the number of buyers per impression (targeting score) divided by a function of the log of airings (a number of repeat exposures), as indicated by the formula below. Thus, a targeting function may include an effect of repeat exposures.








rpi


Ω


(


P
_

,
M

)

=




R
Ω

(


P
_

,

M
i


)


F

(

M
i

)


=



B

(

M
i

)

/

I

(

M
i

)



a
*

ln

(


A

(

m
j

)

+
1

)








Table 41, below, shows how Fatigue is combined with an RPI function to provide a measure of Fatigue-adjusted performance. In this case, the fatigue function is log(airingcount), and adjusted performance is RPI/log(airingcount). This can be used by media buyers to prioritize buying programs for an upcoming television campaign. This also has the effect of “intelligently” taking into account the programs where a mature TV campaign has been displayed before, and will automatically shift away from those previously purchased programs.

















TABLE 41













tratio/log


call
hour-
am/





(airing


letters
name
pm
Airings
Tratio
impressions
cpm
cost
count)























ADSM
0
am
37
0.564208
1145554
5.558632
6391.333
0.108305


ADSM
1
am
57
0.55924
923339
3.226842
2977.753
0.095877


ADSM
2
am
88
0.564928
972358
3.41012
3349.129
0.087458


ADSM
3
am
137
0.534411
957852
3.483876
3373.266
0.07529


ADSM
4
am
166
0.522296
716889
3.143587
2263.309
0.070819


ADSM
5
am
179
0.442389
687426
3.136466
2155.338
0.059113


ADSM
9
pm
5
0.480302
791513
5.660395
4426.286
0.206855


ADSM
10
pm
4
0.485575
1311788
5.656115
7436.57
0.242787


ADSM
11
pm
12
0.483474
1815042
6.161579
11099.01
0.134862


BET
0
am
10
0.060438
296540
3.358933
1007.307
0.018194


BET
1
am
78
0.102505
219530
2.760971
610.3875
0.016308


BET
2
am
134
0.107418
201678
2.667251
537.9659
0.015202


BET
3
am
32
0.086856
142240
2.844085
403.199
0.017371


BET
3
pm
2
0.129267
181132
3.519042
637.411
0.129267


BET
4
pm
2
0.204869
222712
3.529425
786.0287
0.204869


BET
5
pm
3
0.151973
249874
3.577142
893.7647
0.095884


BET
6
pm
2
0.217091
267509
3.97265
1062.424
0.217091


BET
7
pm
3
0.177545
297013
4.070511
1208.747
0.112018


BET
11
pm
11
0.068216
345731
4.062014
1392.424
0.019719


BRAV
2
am
5
0.145075
168055
3.94912
663.8968
0.062481


BRAV
3
am
8
0.144072
136435
3.727342
506.8012
0.048024


BRAV
3
pm
1
0.090924
145610
4.157167
605.325
Undefined










(1 airing)


BRAV
4
pm
3
0.122715
159740
4.049478
646.7862
0.077424


BRAV
5
pm
3
0.134994
181434
4.093817
742.8897
0.085172


BRAV
6
pm
3
0.117722
200048
3.843167
768.537
0.074275


CENT
0
am
36
0.245966
62115
1.662892
103.1727
0.047576


CENT
1
am
33
0.245826
59733
1.531975
91.2917
0.048732


CENT
2
am
31
0.207932
41280
1.467235
60.5249
0.041971


CENT
3
am
31
0.229982
36776
1.440374
52.9547
0.046422


CENT
4
am
20
0.222849
30514
1.39141
42.2301
0.051562


CENT
5
am
20
0.184917
23950
1.400903
33.4143
0.042786


CENT
11
pm
25
0.164801
65806
1.764107
115.5742
0.035488


CMT
6
am
18
0.20047
73361
2.520763
186.593
0.048075


CMT
7
am
16
0.218006
102085
2.193221
223.7244
0.054502


CMT
8
am
8
0.227641
123642
2.115917
264.2453
0.07588


COM
0
am
20
0.410145
392617
6.513513
2550.5
0.094899


COM
1
am
14
0.331025
332366
4.131354
1370.202
0.086944


COM
2
am
145
0.376298
277418
4.007862
1108.234
0.05241


COM
3
am
156
0.363574
230472
3.979667
916.0395
0.049904


COM
4
am
136
0.364425
185923
3.930438
730.9726
0.051418


COM
5
am
20
0.229064
129064
5.5102
711.1725
0.053


COM
6
am
16
0.177085
110900
5.5102
611.0832
0.044271


COM
7
am
14
0.224238
100927
5.5102
556.1299
0.058896


COM
8
am
18
0.271266
108295
5.444142
587.769
0.065053


COM
9
am
2
0.402209
198479
5.2101
1033.623
0.402209


COM
10
am
3
0.296853
193197
4.436206
876.8231
0.187293


COM
11
am
10
0.327457
188749
4.329612
836.7699
0.098574


COM
12
pm
8
0.368493
270155
4.998707
1359.306
0.122831


COM
1
pm
12
0.348506
249638
4.738493
1205.486
0.097213


COM
2
pm
12
0.382865
248630
4.785818
1209.36
0.106798


COM
3
pm
5
0.362077
246482
4.711765
1180.274
0.155938


COM
4
pm
10
0.377976
307463
5.119644
1580.774
0.113782


COM
5
pm
11
0.386921
335880
5.137939
1730.79
0.111845


COM
6
pm
1
0.394461
331391
5.562533
1843.374
Undefined










(1 airing)


COM
7
pm
3
0.282617
350736
6.095108
2137.75
0.178312


COM
8
pm
5
0.384966
410102
6.689685
2740.605
0.165796


COM
9
pm
3
0.415279
514233
7.1104
3649.757
0.262012


COM
10
pm
6
0.430023
571611
6.352411
3543.82
0.166356


COM
11
pm
18
0.228992
556102
5.722678
3127.78
0.054915


ENN
0
am
24
0.463165
104615
2.565523
267.0332
0.101018


ENN
1
am
21
0.457394
84365
2.198805
183.5872
0.104135


ENN
2
am
27
0.43184
68699
2.173538
148.8815
0.09082


ENN
3
am
104
0.442095
64265
2.172132
139.0443
0.06598


ENN
4
am
106
0.437103
63509
2.170626
137.339
0.064968


ENN
5
am
117
0.399013
60459
2.170165
130.3098
0.058077


ENN
6
am
23
0.386637
57647
2.423775
139.5885
0.085472


ENN
7
am
21
0.413862
61580
2.479913
152.7453
0.094224


ENN
8
am
24
0.404247
62590
2.471786
155.2974
0.088168


ENN
9
am
54
0.403584
59435
2.483862
147.8544
0.070129


ENN
10
am
87
0.335361
68374
2.679908
182.6642
0.052051


ENN
11
am
88
0.328514
70588
2.69034
189.5588
0.050858


ENN
12
pm
57
0.343214
72278
2.652158
191.3165
0.058841


ENN
1
pm
54
0.371394
68743
2.697822
184.9772
0.064535


ENN
2
pm
43
0.360984
69688
2.655957
184.66
0.066525


ENN
3
pm
4
0.426069
112379
2.657375
298.5223
0.213034


ENN
4
pm
5
0.430771
135576
2.675355
362.6836
0.185523


ENN
5
pm
4
0.429995
150685
2.650113
398.9407
0.214998


ENN
6
pm
12
0.402658
138315
2.659052
367.2279
0.112319


ENN
7
pm
6
0.399056
156899
2.69296
422.2595
0.154376


ENN
8
pm
8
0.391363
150196
2.917338
437.9088
0.130454


ENN
9
pm
3
0.395908
141146
2.99225
420.7986
0.24979


ENN
10
pm
3
0.402219
150783
2.909567
438.7097
0.253772


ENN
11
pm
11
0.430644
120833
2.589411
311.1658
0.124484









Table 42, as shown below, depicts cases where a target score may be calculated by combining an airing count with a targeting ratio, such as “tratio/airing count.”
















TABLE 42





call
program





tratio/


letters
name
Airings
tratio
impressions
cpm
cost
airingcount






















ADSM
YPFIGTH
1
0.555362
1056716
3.0864
3261.448
0.555362


ADSM
Delocated
1
0.550869
1142827
5.58115
6378.289
0.550869


ADSM
Black
1
0.536211
825215
3.977575
3282.355
0.536211



Dynamite








ADSM
Swords,
1
0.533966
775532
3.129133
2426.743
0.533966



Knives,









Very









Sharp









Objects









and









Cutlery








ADSM
IGPX
1
0.526385
562121
3.0582
1719.078
0.526385


TNNK
Kenan & Kel
1
0.523345
71010
1.48275
105.2901
0.523345


ADSM
Stroker
1
0.516485
808075
3.503175
2830.828
0.516485



and Hoop








TNNK
NICKMOM
1
0.516058
91757
1.379367
126.5665
0.516058



NIGHT OUT








ADSM
Ghost In
1
0.515655
1387
Undefined
Undefined
0.515655



The Shell



(low
(low








impressions)
impressions)



ADSM
Fat Guy
1
0.505052
825215
2.861175
2361.085
0.505052



Stuck in









Internet








MTV
American
1
0.497064
234956
4.083667
959.482
0.497064



Pie









Presents:









Beta









House








ADSM
Saul of
1
0.492845
808075
2.928625
2366.549
0.492845



the Mole









Men










FIGS. 7A and 7B depict pseudo code in which queries count historical airings by station-day-hour, and count a number of airings in a program, respectively.


Rotation Scoring:


Television media buyers often buy blocks of time on networks called “rotations.” In one embodiment of the present disclosure, these rotations are scored by the system. The rotation can be a media asset pattern instance with wildcards, or any collection of airings.


In one embodiment of the present disclosure, the system takes a “rotation” to be scored, e.g., Seattle-CNN-6 pm-9 pm, and then “explodes” this airing into each possible airing or media instance where the ad could be placed within that rotation, eg. “Seattle-CNN-6 pm-Out Front with ErinB”, “Seattle-CNN-7 pm-AC360”, “Seattle-8 pm-Piers Morgan.” These individual airings or media instances are then scored by the Scoring Service.


In one embodiment, the system assumes equal probability of the ad appearing in any of the underlying media instances.


In another embodiment, the system assumes “worst case” insertion in which it selects the underlying media instance with lowest impressions, highest CPM, lowest tratio or the like.


In another embodiment the system attempts to estimate the placement biases of the network and may distribute the airings based on the media instances with the lowest household impressions.


After scoring the underlying media instances for impressions, response per impression (tratio), buyers per impression and other scores generated by Scoring Service, the system then re-aggregates these media instances to create a final score for the rotation. In one embodiment, the system assumes equal probability and averages the underlying scores. In another embodiment, the system assumes “worst-case” insertion and so selects the media instance with the lowest impressions, highest CPM, lowest tratio or the like, and reports that back as the insertion solution for the rotation. Figure below (“Automated Media Scoring”) shows a flow-chart showing how the rotation is exploded, scored, and then each of the underlying scores put back together into a rotation score.


Table 43, below, depicts exemplary Media Asset Pattern Types matched for one airing, in which all providers are not necessarily able to carry cost, imps, etc., and where threshold drops out features if too little data exists.





















TABLE 43






Media-














Asset-














Pattern-
Media
Source-



Station-
Market-






Airing-
Type-
Asset-
Segment-


Impres-
Master-
Master-

Source-
Thresh-



ID
ID
PatternKey
Key
TRatio
Cost
sions
ID
ID
MAPID
ViewPct
old
CPM



























5.51
1
Affiliate
110401
−0.18217
256.0009
25650
8
169
43986


9.9805


E+08

ABC












5.51
4
ABC-M-
110401
0.481338
114455.6
5253207
8
169
31


21.7878


E+08

Su-8p-12a












5.51
5
Sun-6-
110401
−0.13388
1723.303
164671
8
169
25793


10.4651


E+08

9PM












5.51
7
6-9PM
110401
−0.32743
1253.23
117448
8
169
22047


10.6705


E+08














5.51
14
Affiliate
110401
−0.23746
923.0455
50996
8
169
44087


18.1004


E+08

ABC-Su-














8 pm












5.51
20
Affiliate
110401
−0.07661

88361606
8
169
53041

318794



E+08

ABC












5.51
21
Affiliate
110401
0.042776

26512168
8
169
53095

284698



E+08

ABC-M-














Su-8p-12a












5.51
25
Once
110401
0.124556

387761
8
169
73472

74484



E+08

Upon a














Time












5.51
27
Affiliate
110401
0.316849

3674320
8
169
2277882

2.19



E+08

ABC








E+11



5.51
28
Once
110401
0.473722

4246937
8
169
16363861

7.39



E+08

Upon a








E+08





Time












5.51
30
6-9PM
110401
−0.05157

281602
8
169
88135

4.89



E+08










E+11



5.51
31
ABC-M-
110401
0.496692

5566739
8
169
15112871

5.53



E+08

Su-8p-12a








E+10



5.51
32
ABC-Su-
110401
0.454103

6098754
8
169
2276936

2.15



E+08

8 pm








E+09



5.51
37
Affiliate
110401


3448279
8
169
14087011





E+08

ABC












5.51
45
ABC-Su-
110401



8
169
15067083
0.022112
10119



E+08

8 pm












5.51
46
ABC
110401



8
169
15087374
0.018926
930227



E+08














5.51
47
ABC-
110401



8
169
17079498
0.010732
1907



E+08

Once














Upon a














Time












5.51
51
Affiliate
110401
0.532664
90152.72
5572002
8
169
15258889


16.1796


E+08

ABC-Su-














8 pm












5.51
52
Affiliate
110401
0.288911
30555.57
3050742
8
169
15294285


10.0158


E+08

ABC












5.51
53
Affiliate
110401
0.750027
91973.99
7139718
8
169
16834703


12.882


E+08

ABC-














ONCE














UPON A














TIME












5.51
55
Once
110401
0.77264
579.818
69058
8
169
16822042


8.396


E+08

Upon a














Time












5.51
57
ABC
110401


12746
8
169
15347783





E+08














5.51
58
ABC-Su-
110401


11616
8
169
15347265





E+08

8 pm












5.51
59
ABC-
110401
0.716187
77804.28
5826263
8
169
16315316


13.3541


E+08

Once














Upon a














Time












5.51
60
ABC-
110401
0.38292

4389879
8
169
16065334





E+08

Once














Upon a














Time












5.51
65
ABC-
110401
0.716187
84081.14
6261621
8
169
16085946


13.428


E+08

Once














Upon a














Time












5.51
74
ABC-Su-
110401
0.119195

6657065
8
169
23966510

8.25



E+08

8 pm-Q1








E+08



5.51
75
Once
110401
0.46353

3910833
8
169
24137635





E+08

Upon a














Time-Q1












5.51
76
Once
110401
0.746346
457.458
63879
8
169
24216555


7.1613


E+08

Upon a














Time-Q1












5.51
78
Weekend-
110401
0.891909
80280.79
5944897
8
169
24298243


13.5041


E+08

Prime-














ABC-














Once














Upon a














Time












5.51
81
ABC-
110401
0.371263

420098
8
169
24430573

16803933



E+08

Once














Upon a














Time












5.51
82
Affiliate
110401
0.159728
86607.6
2.38
8
169
24462105


15.2042


E+08

ABC-Su-



E+10










8 pm












5.51
83
Affiliate
110401
0.229127
73853.27
1.84
8
169
24476315


12.9693


E+08

ABC-



E+10










Once














Upon a














Time












5.51
84
ABC-
110401



8
169
24481814
0.002729




E+08

Once














Upon a














Time












5.51
85
ABC-Su-
110401



8
169
24499779
0.002328




E+08

8 pm












5.51
86
ABC-
110401
0.446768

3812924
8
169
24819778

2.59



E+08

Once








E+08





Upon a














Time-














Q12013












5.51
87
ABC-Su-
110401
−0.38981

5558337
8
169
24923543

2.89



E+08

8 pm-








E+08





Q12013
















TABLE 44







Pre-computed Media Asset Patterns and scores - Maptype 69










sourcesegmentkey
MediaAssetPatternKey
mediaassetpatterntypeid
wpi













110401
SOAP - Su - 3 pm
69
0.00322


110401
COM - Tu - 1 pm
69
0.003025


110401
DFH - Tu - 11 am
69
0.002895


110401
DFH - W - 2 pm
69
0.00273


110401
DFH - M - 7 am
69
0.002596


110401
COM - W - 1 pm
69
0.002539


110401
DFH - M - 1 pm
69
0.002291


110401
COM - Th - 1 pm
69
0.002148


110401
COM - Tu - 12 pm
69
0.00211


110401
DFH - Th - 3 pm
69
0.00206
















TABLE 45







Pre-computed Media Asset Patterns and scores - Maptype 60










Source

Mediaasset



segmentkey
MediaAsset PatternKey
pattern type ID
correlation













110401-NC--3
STYL - Chances Are
60
0.826812


110401-NC--3
WE - Notting Hill
60
0.822194


110401-NC--3
STYL - Christian Siriano:
60
0.813051



Having a Moment


110401-NC--3
BRAV - Pretty Woman
60
0.812836


110401-NC--3
BRAV - Proof of Life
60
0.808653


110401-NC--3
STYL - Fashion Police:
60
0.808165



Academy Awards


110401-NC--3
STYL - Project Runway
60
0.806292


110401-NC--3
E! - Sabrina
60
0.805671


110401-NC--3
LIFE - After the Runway
60
0.804079


110401-NC--3
E! - Countdown to the Red
60
0.803744



Carpet: The Golden Globe



Awards
















TABLE 46







Pre-computed Media Asset Patterns and scores - Maptype 32










Source
MediaAsset




segmentkey
PatternKey
mediaassetpatterntypeid
correlation













110401
E! - Sa - 6 am
32
0.771822


110401
STYL - W - 2 am
32
0.770532


110401
E! - W - 4 am
32
0.76947


110401
E! - Tu - 12 am
32
0.769332


110401
E! - Su - 6 am
32
0.769055


110401
BRAV - F - 7 am
32
0.768813


110401
E! - Tu - 8 pm
32
0.767945


110401
STYL - W - 3 am
32
0.76748


110401
E! - W - 2 am
32
0.76741


110401
STYL - Su - 1 am
32
0.7674









Table 47, below, depicts Scoring Service Output records (examples). The records below show some examples of television airings and scored response per impression (tratio), CPM, Impressions and so on.















TABLE 47








SourceSegmentKey

AiringUniversal



JobID
ProductID
ProductName
(“Target”)
SourceSegmentDesc
ID
CreateDate





















33
10107
Art.Com
110401
Art.Com
234266
Aug. 7, 2020








13 11:20


33
10107
Art.Com
110401
Art.Com
247336
Aug. 7, 2020








13 11:20


33
10107
Art.Com
110401
Art.Com
245484
Aug. 7, 2020








13 11:20


33
10107
Art.Com
110401
Art.Com
248284
Aug. 7, 2020








13 11:20


33
10107
Art.Com
110401-NC--1
Art.Com
248313
Aug. 7, 2020






Cluster 1

13 11:20


33
10107
Art.Com
110401
Art.Com
216881
Aug. 7, 2020








13 11:20


33
10107
Art.Com
110401
Art.Com
216897
Aug. 7, 2020








13 11:20









Table 48, below, depicts dimensions (e.g., Network ID, Program ID, Day of Week, etc.), as well as that dual feed airing may have multiple airing events (i.e., different airing dates.)
















TABLE 48










AirDate_
AirDate_



MarketID
NetworkID
ProgramID
DayOfWeek
HourOfDay
Local
UTC
Callletters






















169
16
334
4
23
Apr. 24, 2013
Apr. 24, 2013
BBCA







11:42 PM
6:42 PM



169
11
359
3
17
May 21, 2013
May 21, 2013
AMC







5:02 PM
12:02 PM



169
894
427
7
22
May 18, 2013
May 18, 2013
WE







10:17 PM
5:17 PM



169
11
512
5
12
May 23, 2013
May 23, 2013
AMC







12:28 PM
7:28 AM



169
11
512
5
13
May 23, 2013
May 23, 2013
AMC







1:06 PM
8:06 AM



169
20
587
3
8
Mar. 19, 2013
Mar. 19, 2013
BRAV







8:45 AM
3:45 AM



169
20
587
3
9
Mar. 19, 2013
Mar. 19, 2013
BRAV







9:33 AM
4:33 AM





















TABLE 49A





Program
Media

Impres-




Name
Market
tRatio
sions
Cost
CPM




















Resident
NATIONAL
0.13501
66862
171.7975
2.569433


Evil


The
NATIONAL
−0.23812
423659
1022.501
2.4135


Scorpion


King


Titanic
NATIONAL
0.028158
199198
792.9408
3.980667


As Good as
NATIONAL
−0.07006
252962
616.1395
2.4357


it Gets


As Good as
NATIONAL
−0.06727
285029
689.1526
2.417833


it Gets


Inside the
NATIONAL
0.326143
115778
395.7726
3.418375


Actors


Studio


Inside the
NATIONAL
0.341543
126991
425.9437
3.354125


Actors


Studio






















TABLE 49B









Match
SDH
Program


Program



Error
Airings
Airings


Name
BPI
RPI
WPI
Code
By Date
By Date





















Resident Evil
0.013668

0.021814
1
1
0


The Scorpion
0.0015

0.021814
1
2
0


King








Titanic
0.002871

0.021814
0
1
0


As Good
0.00097

0.021814
1
5
2


as it Gets








As Good
0.00101

0.021814
1
5
3


as it Gets








Inside the
0.013363

0.021814
0
3
1


Actors








Studio








Inside the
0.013331

0.021814
0
1
2


Actors








Studio










FIG. 14 depicts an example of a sample scored output text file.



FIG. 15 depicts another example of a sample scored output text file, including sample scored output (JSON). Imps, Price, C1TR, C2TR, C3TR, TR refer to “Impressions predicted”, “CPM predicted”, “Cluster 1 tratio”, “Cluster 2 tratio”, “Cluster 3 tratio”, “tratio overall”. The system is designed to score multiple targets at once for response per impression—hence the above showing the 3 clusters plus overall score.



FIG. 16 depicts another example JSON output from the scoring service showing a media instance being scored.


Table 50, below, depicts an example cardinality of different media asset pattern types that may be used by the system. In one embodiment there are approximately 18,642,000 pre-computed media asset patterns being used to estimate the response per impression, impressions, CPM and other aspects of a television airing.












TABLE 50







mediaassetpatterntypeid
Number of instances



















1
2,336



2
5,599



3
39



4
16,352



5
56



6
7



7
8



8
213



9
59



10
59



11
211



12
812



13
812



14
20,664



15
214



18
52,467



20
241



21
1,711



22
21,840



24
15,219



25
30,164



27
229



28
49,667



29
7



30
8



31
1,603



32
38,472



33
210



34
42,299



35
46,549



36
4,021,971



37
146



38
13,205



39
1,406



40
40,006



42
3,774,960



45
21,359



46
128



47
15,903



49
933



50
31,900



51
18,332



52
120



53
34,586



54
231



55
13,152



57
288



58
15,877



59
28,018



60
91,958



61
160,403



62
959



63
225,348



65
1,000



66
999



68
633



69
1,706



70
46



71
802



72
7,361



73
3,760



74
155,478



75
143,722



76
35,851



77
5,000



78
4,992



80
73,223



81
21,968



82
18,231



83
17,065



84
19,506



85
35,815



86
273,070



87
385,134



89
8,107,070



90
234,800



91
139,347



93
14,758



98
81,908



105
106



106
156










Table 51, below, depicts an example of trained weights (wexpert) applied to each media asset pattern type. These weights are evaluated multiplied by normalized ad effectiveness scores and combined to estimate the response per impression target. Cadaline is a one-variable linear model. Cadaline_test is the model applied on a hold-out set. % is the percentage of airings where this media asset pattern type is present (non-missing). The weights below are from weightid=20.















TABLE 51








cadaline





Variable
w
cadaline
test
wexpert
wadaline
%





















m-1-Distributor
0.17
0.00
−0.53
0
0
 92%


m-2-Program
0.78
0.16
0.18
0
1.43
  4%


m-4-Distrib.-Rot.
0.21
0
−0.38
0
0
 67%


m-5-Day-Hour
0.25
0.12
0.30
0.09
0.14
100%


m-6-Day of Week
0.40
0.07
0.17
0
0.06
100%


m-7-Hour of Day
0.48
0.12
0.27
0
0.10
100%


m-14-SDH
0.51
0.16
0.27
0.33
0.30
 64%


m-20-STB Station
0.62
0
−0.02
0
0
100%


m-21-STB Station-Rot.
0.63
0
0.12
0
0
100%


m-22-STB SDH
0.99
0
0.23
0
0
100%


m-25-STB Program
0.36
0
−0.31
0
0
 31%


m-27-STBHead Station
0.28
0.23
−0.07
0
0.26
 39%


m-28-STBHead Program
0.68
0.04
−0.08
0
0.49
  9%


m-29-STBHead Day
0.51
0
0.04
0
0
100%


m-30-STBHead
0.28
0
−0.12
0
0
100%


Hour of Day








m-31-STBHead S-Rot.
0.58
0.30
0.25
0.12
0.37
 39%


m-32-STBHead SDH
0.82
0.24
0.23
0
0.21
 39%


m-37-Telesales Nat S
0.94
0.49
0.43
0
0.19
 39%


m-38-Telesales Nat SDH
0.44
0.06
−0.04
0
0.06
 22%


m-39-Telesales Loc S
0.42
0.31
0.30
0.38
1.03
 96%


m-40-Telesales Loc SDH
1.00
0.35
0.32
0
1.46
 61%


SVPct45-STBDevice SDH
0.61
0.15
0.19
0.00
0.02
100%


SVPct46-STBDevice S
0.94
0.17
0.20
0.08
0.03
100%









Table 52, below, depicts yet another set of weights from an earlier model (weightid=3).











TABLE 52





Media Asset Pattern Type
cadaline_test
wexpert

















m-1-Distributor
−0.27321
0


m-5-Day of Week - Hour of Day
0.218107
0.002726


m-6-Day of Week
0.176983
0.113136


m-7-Hour of Day
0.153618
0.091361


m-14-Distributor - Day - Hour
−0.02842
0.725416


m-20-STBDevice-STB Station
−0.03184
0


m-21-STBDevice -STB Station - Rotation
−0.01012
0


m-22-STBDevice -STB Station - Day - Hour
0.009289
0


m-29-STBHead Day of Week
0.040314
0.045517


m-30- STBHead Hour of Day
−0.06275
0


m-32- STBHead Station - Day - Hour
0.142697
0.000718


m-33-DMA
−0.30986
0.021126










FIG. 17 depicts an exemplary graph of standardized score (x-axis) versus buyers per million impressions (y-axis) for an advertiser whose response per impression function was buyers per million impressions.



FIG. 18 depicts an exemplary graph of a comparison of Media Asset Patterns, showing that the program is more predictive than SDH when only considering non-missing values.



FIG. 19 depicts an exemplary graph depicting that the program is often poorly populated, and that program authority increases the match rate.



FIGS. 20 and 21 depict an exemplary graph showing that program authority is not as predictive as the program, however the increase in match rate offsets the small drop in accuracy.



FIG. 8 is a simplified functional block diagram of a computer that may be configured as client devices, APs, ISPs, and/or servers for executing the methods, according to exemplary an embodiment of the present disclosure. Specifically, in one embodiment, any of the modules, servers, systems, and/or platforms may be an assembly of hardware 800 including, for example, a data communication interface 860 for packet data communication. The platform may also include a central processing unit (“CPU”) 820, in the form of one or more processors, for executing program instructions. The platform typically includes an internal communication bus 810, program storage, and data storage for various data files to be processed and/or communicated by the platform such as ROM 830 and RAM 840, although the system 800 often receives programming and data via network communications 870. The server 800 also may include input and output ports 850 to connect with input and output devices such as keyboards, mice, touchscreens, monitors, displays, etc. Of course, the various server functions may be implemented in a distributed fashion on a number of similar platforms, to distribute the processing load. Alternatively, the servers may be implemented by appropriate programming of one computer hardware platform.


Program aspects of the technology may be thought of as “products” or “articles of manufacture” typically in the form of executable code and/or associated data that is carried on or embodied in a type of machine-readable medium. “Storage” type media include any or all of the tangible memory of the computers, processors or the like, or associated modules thereof, such as various semiconductor memories, tape drives, disk drives and the like, which may provide non-transitory storage at any time for the software programming. All or portions of the software may at times be communicated through the Internet or various other telecommunication networks. Such communications, for example, may enable loading of the software from one computer or processor into another, for example, from a management server or host computer of the mobile communication network into the computer platform of a server and/or from a server to the mobile device. Thus, another type of media that may bear the software elements includes optical, electrical and electromagnetic waves, such as used across physical interfaces between local devices, through wired and optical landline networks and over various air-links. The physical elements that carry such waves, such as wired or wireless links, optical links, or the like, also may be considered as media bearing the software. As used herein, unless restricted to non-transitory, tangible “storage” media, terms such as computer or machine “readable medium” refer to any medium that participates in providing instructions to a processor for execution.


While the presently disclosed sharing application, methods, devices, and systems are described with exemplary reference to mobile applications and to transmitting data, it should be appreciated that the presently disclosed embodiments may be applicable to any environment, such as a desktop or laptop computer, an automobile entertainment system, a home entertainment system, etc. Also, the presently disclosed embodiments may be applicable to any type of protocol stack.


With the above described disclosure, it may be possible to target TV ads to maximize well-defined ad response metrics at scale. As described herein, TV targeting may be defined as a well-defined supervised learning problem. Accordingly, the types of ad effectiveness methods that are available may vary, and may each be combined to offset weaknesses in each method. By combining these techniques improvements in TV ad targeting may be realized using present TV systems.


Unless the context clearly requires otherwise, throughout the description and the claims, the words “comprise,” “comprising,” and the like are to be construed in an inclusive sense, as opposed to an exclusive or exhaustive sense; that is to say, in the sense of “including, but not limited to.” As used herein, the terms “connected,” “coupled,” or any variant thereof means any connection or coupling, either direct or indirect, between two or more elements; the coupling or connection between the elements can be physical, logical, or a combination thereof. Additionally, the words “herein,” “above,” “below,” and words of similar import, when used in this application, refer to this application as a whole and not to any particular portions of this application. Where the context permits, words in the above Detailed Description using the singular or plural number may also include the plural or singular number respectively. The word “or,” in reference to a list of two or more items, covers all of the following interpretations of the word: any of the items in the list, all of the items in the list, and any combination of the items in the list.


The above detailed description of examples of the present disclosure is not intended to be exhaustive or to limit the present disclosure to the precise form disclosed above. While specific examples for the present disclosure are described above for illustrative purposes, various equivalent modifications are possible within the scope of the present disclosure, as those skilled in the relevant art will recognize. For example, while processes or blocks are presented in a given order, alternative implementations may perform routines having steps, or employ systems having blocks, in a different order, and some processes or blocks may be deleted, moved, added, subdivided, combined, and/or modified to provide alternative or sub-combinations. Each of these processes or blocks may be implemented in a variety of different ways. Also, while processes or blocks are at times shown as being performed in series, these processes or blocks may instead be performed or implemented in parallel, or may be performed at different times. Further any specific numbers noted herein are only examples: alternative implementations may employ differing values or ranges.


The teachings of the present disclosure provided herein can be applied to other systems, not necessarily the system described above. The elements and acts of the various examples described above can be combined to provide further implementations of the present disclosure. Some alternative implementations of the present disclosure may include not only additional elements to those implementations noted above, but also may include fewer elements.


These and other changes can be made to the present disclosure in light of the above detailed description. While the above description describes certain examples of the present disclosure, and describes the best mode contemplated, no matter how detailed the above appears in text, the present disclosure can be practiced in many ways. Details of the system may vary considerably in its specific implementation, while still being encompassed by the present disclosure disclosed herein. As noted above, particular terminology used when describing certain features or aspects of the present disclosure should not be taken to imply that the terminology is being redefined herein to be restricted to any specific characteristics, features, or aspects of the present disclosure with which that terminology is associated. In general, the terms used in the following claims should not be construed to limit the present disclosure to the specific examples disclosed in the specification, unless the above detailed description section explicitly defines such terms. Accordingly, the actual scope of the present disclosure encompasses not only the disclosed examples, but also all equivalent ways of practicing or implementing the present disclosure.

Claims
  • 1. A computer-implemented method comprising: generating, by a server, a model to predict advertisement effectiveness for a pairing of an advertisement and a media placement based on a first advertisement effectiveness measure and a minimum participation threshold for the first advertisement effectiveness measure, the first advertisement effectiveness measure including one or more of phone responses, demographic similarity, set top box buyers, and web responses;combining the first advertisement effectiveness measure with a historical airing count to predict the advertisement effectiveness;converting the predicted advertisement effectiveness into native units including buyers per million and phone responses per million; andplacing the advertisement within the media placement based on the first advertisement effectiveness measure.
  • 2. The method of claim 1, further comprising: adjusting a value of the first advertisement effectiveness measure for the pairing of the advertisement and the media placement to a default value of the first advertisement effectiveness measure if a number of impressions for the pairing is below the minimum participation threshold for the first advertisement effectiveness measure.
  • 3. The method of claim 1, wherein the model is further generated based a number of previously placed airings of the advertisement in the media placement, the number of previously placed airings being estimated based on the historical airing count and co-viewing probabilities from set top box data.
  • 4. The method of claim 1, wherein a weight for each media placement is based on one or more of a count of persons, and other data sufficiency statistics.
  • 5. The method of claim 3, wherein the model disregards a second advertisement effectiveness measure for a second particular pairing of an advertisement and a media asset if a number of impressions for the second particular pairing of the advertisement and the media asset is below a minimum participation threshold for the second advertisement effectiveness measure.
  • 6. The method of claim 3, further comprising: applying the model to a plurality of media assets for a particular advertisement to assist in selection of one or more of the plurality of media assets for airing the advertisement.
  • 7. The method of claim 1, wherein the media placement is identified as having at least a predetermined number of observed viewers over an expected number of viewers for a predetermined time and a predetermined network.
  • 8. The method of claim 1, further comprising: creating, by the server, a media placement of same-time-last-week; andcalculating, by the server, an advertisement effectiveness measure for the media placement.
  • 9. The method of claim 1, wherein the media placements include one or more of station, program, station-program, station-day-hour, station-day-hour-program-market.
  • 10. The method of claim 1, wherein each advertisement effectiveness measure is standardized so that media placements are directly comparable with each other.
  • 11. The method of claim 10, wherein the standardized advertisement effectiveness measures predict a standardized advertisement effectiveness.
  • 12. The method of claim 11, wherein the predicted standardized advertisement effectiveness is converted into the native units including the buyers per million and the phone responses per million.
  • 13. A system for generating a model to predict advertisement effectiveness, the system comprising: a data storage device that stores instructions for generating a model to predict advertisement effectiveness; anda processor configured to execute the instructions to perform a method including: generating, by a server, a model to predict advertisement effectiveness for a pairing of an advertisement and a media placement based on a first advertisement effectiveness measure and a minimum participation threshold for the first advertisement effectiveness measure, the first advertisement effectiveness measure including one or more of phone responses, demographic similarity, set top box buyers, and web responses;combining the first advertisement effectiveness measure with a historical airing count to predict the advertisement effectiveness;converting the predicted advertisement effectiveness into native units including buyers per million and phone responses per million; andplacing the advertisement within the media placement based on the first advertisement effectiveness measure.
  • 14. The system of claim 13, the method further comprising: adjusting a value of the first advertisement effectiveness measure for the pairing of the advertisement and the media placement to a default value of the first advertisement effectiveness measure if a number of impressions for the pairing is below the minimum participation threshold for the first advertisement effectiveness measure.
  • 15. The system of claim 13, wherein the model is further generated based on a number of previously placed airings of the advertisement in the media placement, the number of previously placed airings being estimated based on the historical airing count and co-viewing probabilities from set top box data.
  • 16. The system of claim 15, wherein a weight for each media placement is based on one or more of a count of persons, and other data sufficiency statistics.
  • 17. The system of claim 15, wherein the model disregards a second advertisement effectiveness measure for a second particular pairing of an advertisement and a media asset if a number of impressions for the second particular pairing of the advertisement and the media asset is below a minimum participation threshold for the second advertisement effectiveness measure.
  • 18. A non-transitory machine-readable medium storing instructions that, when executed by a computing system, causes the computing system to perform a method comprising: generating, by a server, a model to predict advertisement effectiveness for a pairing of an advertisement and a media placement based on a first advertisement effectiveness measure and a minimum participation threshold for the first advertisement effectiveness measure, the first advertisement effectiveness measure including one or more of phone responses, demographic similarity, set top box buyers, and web responses;combining the first advertisement effectiveness measure with a historical airing count to predict the advertisement effectiveness;converting the predicted advertisement effectiveness into native units including buyers per million and phone responses per million; andplacing the advertisement within the media placement based on the first advertisement effectiveness measure.
  • 19. The non-transitory machine-readable medium of claim 18, further comprising: adjusting a value of the first advertisement effectiveness measure for the pairing of the advertisement and the media placement to a default value of the first advertisement effectiveness measure if a number of impressions for the pairing is below the minimum participation threshold for the first advertisement effectiveness measure.
  • 20. The non-transitory machine-readable medium of claim 18, wherein the model is further generated based a number of previously placed airings of the advertisement in the media placement, the number of previously placed airings being estimated based on the historical airing count and co-viewing probabilities from set top box data.
CROSS-REFERENCE TO RELATED APPLICATIONS

This application is a continuation of and claims the benefit of priority to U.S. patent application Ser. No. 17/173,873, filed Feb. 11, 2021, which is a continuation of and claims the benefit of priority to U.S. patent application Ser. No. 16/509,617, filed Jul. 12, 2019, now U.S. Pat. No. 10,965,997, which is a continuation of and claims the benefit of priority to U.S. patent application Ser. No. 15/880,118, filed Jan. 25, 2018, now U.S. Pat. No. 10,405,057, which is a continuation of and claims the benefit of priority to U.S. patent application Ser. No. 15/467,411, filed Mar. 23, 2017, now U.S. Pat. No. 9,918,142, which is a continuation of and claims the benefit of priority to U.S. patent application Ser. No. 14/586,746, filed Dec. 30, 2014, now U.S. Pat. No. 9,641,882, which claims the benefit of priority to U.S. Provisional Patent Application No. 61/922,007, filed Dec. 30, 2013, the entireties of which are incorporated herein by reference.

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Related Publications (1)
Number Date Country
20230014859 A1 Jan 2023 US
Provisional Applications (1)
Number Date Country
61922007 Dec 2013 US
Continuations (5)
Number Date Country
Parent 17173873 Feb 2021 US
Child 17823981 US
Parent 16509617 Jul 2019 US
Child 17173873 US
Parent 15880118 Jan 2018 US
Child 16509617 US
Parent 15467411 Mar 2017 US
Child 15880118 US
Parent 14586746 Dec 2014 US
Child 15467411 US