This disclosure relates generally to computer systems for monitoring audiences, and, more particularly, to methods and apparatus to adjust demographic information of user accounts to reflect primary users of the user accounts.
Audience measurement entities (AMEs) collect audience measurement information from panelists (e.g., individuals who agree to be monitored by the AMEs) including the number of unique audience members for particular media and the number of impressions of the media corresponding to each of the audience members. In some examples, AMEs utilize third-party cookies (e.g., where the AMEs are third parties relative to the entity serving media to a client device) to collect audience measurement information. In such examples, an AME may issue an impression request to the entity serving the media to client devices. Third-party cookie tracking is used by measurement entities to track access to media by client devices from first-party media servers.
The figures are not to scale. In general, the same reference numbers will be used throughout the drawing(s) and accompanying written description to refer to the same or like parts. As used herein, connection references (e.g., attached, coupled, connected, and joined) may include intermediate members between the elements referenced by the connection reference and/or relative movement between those elements unless otherwise indicated. As such, connection references do not necessarily infer that two elements are directly connected and/or in fixed relation to each other.
Unless specifically stated otherwise, descriptors such as “first,” “second,” “third,” etc. are used herein without imputing or otherwise indicating any meaning of priority, physical order, arrangement in a list, and/or ordering in any way, but are merely used as labels and/or arbitrary names to distinguish elements for ease of understanding the disclosed examples. In some examples, the descriptor “first” may be used to refer to an element in the detailed description, while the same element may be referred to in a claim with a different descriptor such as “second” or “third.” In such instances, it should be understood that such descriptors are used merely for identifying those elements distinctly that might, for example, otherwise share a same name. As used herein, “approximately” and “about” refer to dimensions that may not be exact due to manufacturing tolerances and/or other real world imperfections. As used herein “substantially real time” refers to occurrence in a near instantaneous manner recognizing there may be real world delays for computing time, transmission, etc. Thus, unless otherwise specified, “substantially real time” refers to real time+/−1 second.
AMEs usually collect large amounts of audience measurement information from their panelists including the number of unique audience members for particular media and the number of impressions corresponding to each of the audience members. Unique audience size, as used herein, refers to the total number of unique people (e.g., non-duplicate people) who had an impression of (e.g., were exposed to) a particular media item, without counting duplicate audience members. As used herein, an impression is defined to be an event in which a home or individual accesses and/or is exposed to media (e.g., an advertisement, content, a group of advertisements and/or a collection of content). Impression count, as used herein, refers to the number of times audience members are exposed to a particular media item. The unique audience size associated with a particular media item will always be equal to or less than the number of impressions associated with the media item because, while all audience members by definition have at least one impression of the media, an individual audience member may have more than one impression. That is, the unique audience size is equal to the impression count only when every audience member was exposed to the media only a single time (i.e., the number of audience members equals the number of impressions). Where at least one audience member is exposed to the media multiple times, the unique audience size will be less than the total impression count because multiple impressions will be associated with individual audience members. Thus, unique audience size refers to the number of unique people in an audience (without double counting any person) exposed to media for which audience metrics are being generated. Unique audience size may also be referred to as unique audience, deduplicated audience size, deduplicated audience, or audience.
Techniques for monitoring user access to an Internet-accessible media, such as digital television (DTV) media and digital content ratings (DCR) media, have evolved significantly over the years. Internet-accessible media is also known as digital media. In the past, such monitoring was done primarily through server logs. In particular, media providers serving media on the Internet would log the number of requests received for their media at their servers. Basing Internet usage research on server logs is problematic for several reasons. For example, server logs can be tampered with either directly or via zombie programs, which repeatedly request media from the server to increase the server log counts. Also, media is sometimes retrieved once, cached locally and then repeatedly accessed from the local cache without involving the server. Server logs cannot track such repeat views of cached media. Thus, server logs are susceptible to both over-counting and under-counting errors.
As Internet technology advanced, the limitations of server logs were overcome through methodologies in which the Internet media to be tracked was tagged with monitoring instructions. In particular, monitoring instructions (also known as a media impression request or a beacon request) are associated with the hypertext markup language (HTML) of the media to be tracked. When a client requests the media, both the media and the impression request are downloaded to the client. The impression requests are, thus, executed whenever the media is accessed, be it from a server or from a cache.
The beacon instructions cause monitoring data reflecting information about the access to the media (e.g., the occurrence of a media impression) to be sent from the client that downloaded the media to a monitoring server. Typically, the monitoring server is owned and/or operated by an AME (e.g., any party interested in measuring or tracking audience exposures to advertisements, media, and/or any other media) that did not provide the media to the client and who is a trusted third party for providing accurate usage statistics (e.g., The Nielsen Company, LLC). Advantageously, because the beaconing instructions are associated with the media and executed by the client browser whenever the media is accessed, the monitoring information is provided to the AME irrespective of whether the client is associated with a panelist of the AME. In this manner, the AME is able to track every time a person is exposed to the media on a census-wide or population-wide level. As a result, the AME can reliably determine the total impression count for the media without having to extrapolate from panel data collected from a relatively limited pool of panelists within the population. Frequently, such beacon requests are implemented in connection with third-party cookies. Since the AME is a third party relative to the first party serving the media to the client device, the cookie sent to the AME in the impression request to report the occurrence of the media impression of the client device is a third-party cookie. Third-party cookie tracking is used by audience measurement servers to track access to media by client devices from first-party media servers.
Tracking impressions by tagging media with beacon instructions using third-party cookies is insufficient, by itself, to enable an AME to reliably determine the unique audience size associated with the media if the AME cannot identify the individual user associated with the third-party cookie. That is, the unique audience size cannot be determined because the collected monitoring information does not uniquely identify the person(s) exposed to the media. Under such circumstances, the AME cannot determine whether two reported impressions are associated with the same person or two separate people. The AME may set a third-party cookie on a client device reporting the monitoring information to identify when multiple impressions occur using the same device. However, cookie information does not indicate whether the same person used the client device in connection with each media impression. Furthermore, the same person may access media using multiple different devices that have different cookies so that the AME cannot directly determine when two separate impressions are associated with the same person or two different people.
Furthermore, the monitoring information reported by a client device executing the beacon instructions does not provide an indication of the demographics or other user information associated with the person(s) exposed to the associated media. To at least partially address this issue, the AME establishes a panel of users who have agreed to provide their demographic information and to have their Internet browsing activities monitored. When an individual joins the panel, that person provides corresponding detailed information concerning the person's identity and demographics (e.g., gender, race, income, home location, occupation, etc.) to the AME. The AME sets a cookie on the panelist computer that enables the AME to identify the panelist whenever the panelist accesses tagged media and, thus, sends monitoring information to the AME. Additionally or alternatively, the AME may identify the panelists using other techniques (independent of cookies) by, for example, prompting the user to login or identify themselves. While AMEs are able to obtain user-level information for impressions from panelists (e.g., identify unique individuals associated with particular media impressions), most of the client devices providing monitoring information from the tagged pages are not panelists. Thus, the identity of most people accessing media remains unknown to the AME such that it is necessary for the AME to use statistical methods to impute demographic information based on the data collected for panelists to the larger population of users providing data for the tagged media. However, panel sizes of AMEs remain small compared to the general population of users.
There are many database proprietors operating on the Internet. These database proprietors provide services to large numbers of subscribers. Examples of such database proprietors include social network sites (e.g., Facebook, Twitter, MySpace, etc.), multi-service sites (e.g., Yahoo!, Google, Axiom, Catalina, etc.), online retailer sites (e.g., Amazon.com, Buy.com, etc.), credit reporting sites (e.g., Experian), streaming media sites (e.g., YouTube, Hulu, etc.), etc. In exchange for the provision of services, the subscribers register with the database proprietors. As used herein, the term “registered user” refers to an individual who has established a user account with a database proprietor (e.g., the individual who subscribes to the database proprietor). Database proprietors set cookies and/or other device/user identifiers on the client devices of their registered users to enable the database proprietors to recognize their registered users when their registered users visit website(s) on the Internet domains of the database proprietors.
The protocols of the Internet make cookies inaccessible outside of the domain (e.g., Internet domain, domain name, etc.) on which they were set. Thus, a cookie set in, for example, the YouTube.com domain (e.g., a first party) is accessible to servers in the YouTube.com domain, but not to servers outside that domain. Therefore, although an AME (e.g., a third party) might find it advantageous to access the cookies set by the database proprietors, they are unable to do so. However, techniques have been developed that enable an AME to leverage media impression information collected in association with demographic information in registered user databases of database proprietors to collect more extensive Internet usage (e.g., beyond the limited pool of individuals participating in an AME panel) by extending the impression request process to encompass partnered database proprietors and by using such partners as interim data collectors. In particular, this task is accomplished by structuring the AME to respond to impression requests from clients (who may not be a member of an audience measurement panel and, thus, may be unknown to the AME) by redirecting the clients from the AME to a database proprietor, such as a social network site partnered with the AME, using an impression response. Such a redirection initiates a communication session between the client accessing the tagged media and the database proprietor. For example, the impression response received from the AME may cause the client to send a second impression request to the database proprietor along with a cookie set by that database proprietor. In response to receiving this impression request, the database proprietor (e.g., Facebook) can access the cookie it has set on the client to thereby identify the client based on the internal records of the database proprietor.
In the event the client corresponds to a registered user of the database proprietor (as determined from the cookie associated with the client), the database proprietor logs/records a database proprietor demographic impression in association with the client/user. As used herein, a demographic impression is an impression that can be matched to particular demographic information of a particular registered user of the services of a database proprietor. The database proprietor has the demographic information for the particular registered user because the registered user would have provided such information when setting up an account to subscribe to the services of the database proprietor.
Sharing of demographic information associated with registered users of database proprietors enables AMEs to extend or supplement their panel data with substantially reliable demographics information from external sources (e.g., database proprietors), thus extending the coverage, accuracy, and/or completeness of their demographics-based audience measurements. Such access also enables the AME to monitor persons who would not otherwise have joined an AME panel. Any web service provider having a database identifying demographics of a set of individuals may cooperate with the AME. Such web service providers may be referred to as “database proprietors” and include, for example, wireless service carriers, mobile software/service providers, social media sites (e.g., Facebook, Twitter, MySpace, etc.), online retailer sites (e.g., Amazon.com, Buy.com, etc.), multi-service sites (e.g., Yahoo!, Google, Experian, etc.), and/or any other Internet sites that collect demographic data of users and/or otherwise maintain user registration records. The use of demographic information from disparate data sources (e.g., high-quality demographic information from the panels of an audience measurement entity and/or registered user data of database proprietors) results in improved reporting effectiveness of metrics for both online and offline advertising campaigns.
The above approach to generating audience metrics by an AME depends upon the beacon requests (or tags) associated with the media to be monitored to enable an AME to obtain census wide impression counts (e.g., impressions that include the entire population exposed to the media regardless of whether the audience members are panelists of the AME). Further, the above approach also depends on third-party cookies to enable the enrichment of the census impressions with demographic information from database proprietors. However, in more recent years, there has been a movement away from the use of third-party cookies by third parties. Thus, while media providers (e.g., database proprietors) may still use first-party cookies to collect first-party data, the elimination of third-party cookies prevents the tracking of Internet media by AMEs (outside of client devices associated with panelists for which the AME has provided a meter to track Internet usage behavior). Furthermore, independent of the use of cookies, some database proprietors are moving towards the elimination of third party impression requests or tags (e.g., redirect instructions) embedded in media (e.g., beginning in 2020, third-party tags will no longer be allowed on Youtube.com and other Google Video Partner (GVP) sites). As technology moves in this direction, AMEs (e.g., third parties) will no longer be able to track census wide impressions of media in the manner they have in the past. Furthermore, AMEs will no longer be able to send a redirect request to a client accessing media to cause a second impression request to a database proprietor to associate the impression with demographic information. Thus, the only Internet media monitoring that AMEs will be able to directly perform in such a system will be with panelists that have agreed to be monitored using different techniques that do not depend on third-party cookies and/or tags.
Examples disclosed herein overcome at least some of the limitations that arise out of the elimination of third-party cookies and/or third-party tags by enabling the merging of high-quality demographic information from the panels of an AME with media impression data that continues to be collected by database proprietors. As mentioned above, while third-party cookies and/or third-party tags may be eliminated, database proprietors that provide and/or manage the delivery of media accessed online are still able to track impressions of the media (e.g., via first-party cookies and/or first-party tags). Furthermore, database proprietors are still able to associate demographic information with the impressions whenever the impressions can be matched to a particular registered user of the database proprietor for which demographic information has been collected (e.g., when the user registered with the database proprietor). In some examples, the merging of AME panel data and database proprietor impressions data is merged in a privacy-protected cloud environment maintained by the database proprietor.
More particularly,
As used herein, a media impression is defined as an occurrence of access and/or exposure to media 108 (e.g., an advertisement, a movie, a movie trailer, a song, a web page banner, etc.). Examples disclosed herein may be used to monitor for media impressions of any one or more media types (e.g., video, audio, a web page, an image, text, etc.). In examples disclosed herein, the media 108 may be primary content and/or advertisements. Examples disclosed herein are not restricted for use with any particular type of media. On the contrary, examples disclosed herein may be implemented in connection with tracking impressions for media of any type or form in a network.
In the illustrated example of
In some examples, the media 108 is associated with a unique impression identifier (e.g., a consumer playback nonce (CPN)) generated by the database proprietor 102. In some examples, the impression identifier serves to uniquely identify a particular impression of the media 108. Thus, even though the same media 108 may be served multiple times, each time the media 108 is served the database proprietor 102 will generate a new and different impression identifier so that each impression of the media 108 can be distinguished from every other impression of the media. In some examples, the impression identifier is encoded into a uniform resource locator (URL) used to access the primary content (e.g., a particular YouTube video) along with which the media 108 (as an advertisement) is served. In some examples, with the impression identifier (e.g., CPN) encoded into the URL associated with the media 108, the audience measurement meter 115 extracts the identifier at the time that a media impression occurs so that the AME 104 is able to associate a captured impression with the impression identifier.
In some examples, the meter 115 may not be able to obtain the impression identifier (e.g., CPN) to associate with a particular media impression. For instance, in some examples where the panelist client device 112 is a mobile device, the meter 115 collects a mobile advertising identifier (MAID) and/or an identifier for advertisers (IDFA) that may be used to uniquely identify client devices 110 (e.g., the panelist client devices 112 being monitored by the AME 104). In some examples, the meter 115 reports the MAID and/or IDFA for the particular device associated with the meter 115 to the AME 104. The AME 104, in turn, provides the MAID and/or IDFA to the database proprietor 102 in a double blind exchange through which the database proprietor 102 provides the AME 104 with the impression identifiers (e.g., CPNs) associated with the client device 110 identified by the MAID and/or IDFA. Once the AME 104 receives the impression identifiers for the client device 110 (e.g., a particular panelist client device 112), the impression identifiers are associated with the impressions previously collected in connection with the device.
In the illustrated example, the database proprietor 102 logs each media impression occurring on any of the client devices 110 within the privacy-protected cloud environment 106. In some examples, logging an impression includes logging the time the impression occurred and the type of client device 110 (e.g., whether a desktop device, a mobile device, a tablet device, etc.) on which the impression occurred. Further, in some examples, impressions are logged along with the impression's unique impression identifier. In this example, the impressions and associated identifiers are logged in a campaign impressions database 116. The campaign impressions database 116 stores all impressions of the media 108 regardless of whether any particular impression was detected from a panelist client device 112 or a non-panelist client device 114. Furthermore, the campaign impressions database 116 stores all impressions of the media 108 regardless of whether the database proprietor 102 is able to match any particular impression to a particular registered user of the database proprietor 102. As mentioned above, in some examples, the database proprietor 102 identifies a particular registered user (e.g., subscriber) associated with a particular media impression based on a cookie stored on the client device 110. In some examples, the database proprietor 102 associates a particular media impression with a registered user that was signed into the online services of the database proprietor 102 at the time the media impression occurred. In some examples, in addition to logging such impressions and associated identifiers in the campaign impressions database 116, the database proprietor 102 separately logs such impressions in a matchable impressions database 118. As used herein, a matchable impression is an impression that the database proprietor 102 is able to match to at least one of a particular registered user (e.g., because the impression occurred on a client device 110 on which a registered user was signed into the database proprietor 102) or a particular client device 110 (e.g., based on a first-party cookie of the database proprietor 102 detected on the client device 110). In some examples, if the database proprietor 102 cannot match a particular media impression (e.g., because no registered user was signed in at the time the media impression occurred and there is no recognizable cookie on the associated client device 110) the impressions is omitted from the matchable impressions database 118 but is still logged in the campaign impressions database 116.
As indicated above, the matchable impressions database 118 includes media impressions (and associated unique impression identifiers) that the database proprietor 102 is able to match to a particular user that has registered with the database proprietor 102. In some examples, the matchable impressions database 118 also includes user-based covariates that correspond to the particular registered user to which each impression in the database was matched. As used herein, a user-based covariate refers to any item(s) of information collected and/or generated by the database proprietor 102 that can be used to identify, characterize, quantify, and/or distinguish particular registered users and/or their associated behavior. For example, user-based covariates may include the name, age, and/or gender of the registered user (and/or any other demographic information about the registered user) collected at the time the registered user registered with the database proprietor 102, and/or the relative frequency with which the registered user uses the different types of client device 110, the number of media items the registered user has accessed during a most recent period of time (e.g., the last 30 days), the search terms entered by the registered user during a most recent period of time (e.g., the last 30 days), feature embeddings (numerical representations) of classifications of videos viewed and/or searches entered by the registered user, etc. As mentioned above, the matchable impressions database 118 also includes impressions matched to particular client devices 110 (based on first-party cookies), even when the impressions cannot be matched to particular registered users (based on the registered users being signed in at the time). In some such examples, the impressions matched to particular client devices 110 are treated as distinct users within the matchable impressions database 118. However, as no particular user can be identified, such impressions in the matchable impressions database 118 will not be associated with any user-based covariates.
Although only one campaign impressions database 116 is shown in the illustrated example, the privacy-protected cloud environment 106 may include any number of campaign impressions databases 116, with each database storing impressions corresponding to different media campaigns associated with one or more different advertisers (e.g., product manufacturers, service providers, retailers, advertisement servers, etc.). In other examples, a single campaign impressions database 116 may store the impressions associated with multiple different campaigns. In some such examples, the campaign impressions database 116 may store a campaign identifier in connection with each impression to identify the particular campaign to which the impression is associated. Similarly, in some examples, the privacy-protected cloud environment 106 may include one or more matchable impressions databases 118 as appropriate. Further, in some examples, the campaign impressions database 116 and the matchable impressions database 118 may be combined and/or represented in a single database.
In the illustrated example of
As shown in the illustrated example, whereas the database proprietor 102 is able to collect impressions from both panelist client devices 112 and non-panelist client devices 114, the AME 104 is limited to collecting impressions from panelist client devices 112. In some examples, the AME 104 also collects the impression identifier associated with each collected media impression so that the collected impressions may be matched with the impressions collected by the database proprietor 102 as described further below. In the illustrated example, the impressions (and associated impression identifiers) of the panelists are stored in an AME panel data database 122 that is within an AME first party data store 124 in an AME proprietary cloud environment 126. In some examples, the AME proprietary cloud environment 126 is a cloud-based storage system (e.g., a Google Cloud Project) provided by the database proprietor 102 that includes functionality to enable interfacing with the privacy-protected cloud environment 106 also maintained by the database proprietor 102. As mentioned above, the privacy-protected cloud environment 106 is governed by privacy constraints that prevent any party (with some limited exceptions for the database proprietor 102) from accessing private information associated with particular individuals. By contrast, the AME proprietary cloud environment 126 is indicated as proprietary because it is exclusively controlled by the AME such that the AME has full control and access to the data without limitation. While some examples involve the AME proprietary cloud environment 126 being a cloud-based system that is provided by the database proprietor 102, in other examples, the AME proprietary cloud environment 126 may be provided by a third party distinct from the database proprietor 102.
While the AME 104 is limited to collected impressions (and associated identifiers) from only panelists (e.g., via the panelist client devices 112), the AME 104 is able to collect panel data that is much more robust than merely media impressions. As mentioned above, the panelist client devices 112 are associated with users that have agreed to participate on a panel of the AME 104. Participation in a panel includes the provision of detailed demographic information about the panelist and/or all members in the panelist's household. Such demographic information may include age, gender, race, ethnicity, education, employment status, income level, geographic location of residence, etc. In addition to such demographic information, which may be collected at the time a user enrolls as a panelist, the panelist may also agree to enable the AME 104 to track and/or monitor various aspects of the user's behavior. For example, the AME 104 may monitor panelists' Internet usage behavior including the frequency of Internet usage, the times of day of such usage, the websites visited, and the media exposed to (from which the media impressions are collected).
AME panel data (including media impressions and associated identifiers, demographic information, and Internet usage data) is shown in
In some examples, there may be multiple different techniques and/or methodologies used to collect the AME panel data that depends on the particular circumstances involved. For example, different monitoring techniques and/or different types of audience measurement meters 115 may be employed for media accessed via a desktop computer relative to the media accessed via a mobile computing device. In some examples, the audience measurement meter 115 may be implemented as a software application that panelists agree to install on their devices to monitor all Internet usage activity on the respective devices. In some examples, the meter 115 may prompt a user of a particular device to identify themselves so that the AME 104 can confirm the identity of the user (e.g., whether it was the mother or daughter in a panelist household). In some examples, prompting a user to self-identify may be considered overly intrusive. Accordingly, in some such examples, the circumstances surrounding the behavior of the user of a panelist client device 112 (e.g., time of day, type of content being accessed, etc.) may be analyzed to infer the identity of the user to some confidence level (e.g., the accessing of children's content in the early afternoon would indicate a relatively high probability that a child is using the device at that point in time). In some examples, the audience measurement meter 115 may be a separate hardware device that is in communication with a particular panelist client device 112 and enabled to monitor the Internet usage of the panelist client device 112.
In some examples, the processes and/or techniques used by the AME 104 to capture panel data (including media impressions and who in particular was exposed to the media) can differ depending on the nature of the panelist client device 112 through which the media was accessed. For instance, in some examples, the identity of the individual using the panelist client device 112 may be based on the individual responding to a prompt to self-identify. In some examples, such prompts are limited to desktop client devices because such a prompt is viewed as overly intrusive on a mobile device. However, without specifically prompting a user of a mobile device to self-identify, there often is no direct way to determine whether the user is the primary user of the device (e.g., the owner of the device) or someone else (e.g., a child of the primary user). Thus, there is the possibility of misattribution of media impressions within the panel data collected using mobile devices. In some examples, to overcome the issue of misattribution in the panel data, the AME 104 may develop a machine learning model that can predict the true user of a mobile device (or any device for that matter) based on information that the AME 104 does know for certain and/or has access to. For example, inputs to the machine learning model may include the composition of the panelist household, the type (e.g., genre and/or category) of the content, the daypart or time of day when the content was accessed, etc. In some examples, the truth data used to generate and validate such a model may be collected through field surveys in which the above input features are tracked and/or monitored for a subset of panelists that have agreed to be monitored in this manner (which is more intrusive than the typical passive monitoring of content accessed via mobile devices).
As mentioned above, in some examples, the AME panel data (stored in the AME panel data database 122) is merged with the database proprietor impressions data (stored in the matchable impressions database 118) within the privacy-protected cloud environment 106 to take advantage of the combination of the disparate sets of data to generate more robust and/or reliable audience measurement metrics. In particular, the database proprietor impressions data provides the advantage of volume. That is, the database proprietor impressions data corresponds to a much larger number of impressions than the AME panel data because the database proprietor impressions data includes census wide impression information that includes all impressions collected from both the panelist client devices 112 (associated with a relatively small pool of audience members) and the non-panelist client devices 114. The AME panel data provides the advantage of high-quality demographic data for a statistically significant pool of audience members (e.g., panelists) that may be used to correct for errors and/or biases in the database proprietor impressions data.
One source of error in the database proprietor impressions data is that the demographic information for matchable users collected by the database proprietor 102 during user registration may not be truthful. In particular, in some examples, many database proprietors impose age restrictions on their user accounts (e.g., a user must be at least 13 years of age, at least 18 years of age to register with the database proprietor 102, etc.). However, when a person registers with the database proprietor 102, the person typically self-declares their age and may, therefore, lie about their age (e.g., an 11 year old may say they are 18 to bypass the age restrictions for a user account). Independent of age restrictions, a particular user may choose to enter an incorrect age for any other reason or no reason at all when registering with the database proprietor 102 (e.g., a 44 year old may choose to assert they are only 25). Where a database proprietor 102 does not verify the self-declared age of registered users, there is a relatively high likelihood that the ages of at least some registered users of the database proprietor stored in the matchable impressions database 118 (as a particular user-based covariate) are inaccurate. Further, it is possible that other self-declared demographic information (e.g., gender, race, ethnicity, income level, etc.) may also be falsified by users during registration.
As described further below, the AME panel data (which contains reliable demographic information about the panelists) can be used to correct for inaccurate demographic information in the database proprietor impressions data. Additionally, while the self-declared age of a particular registered user may be truthful and accurate, a different person of a different age may end up using a client device 110 on which the particular registered user is logged into the user account. For example, a child my access media on a client device 110 in which a parent of the child is logged into a user account of the database proprietor 102. As a result, media accessed by the child would be misattributed to the demographics (e.g., the self-declared age) of the parent.
Thus, even when self-declared demographic information is true, it may nevertheless be wrong with respect to the demographic characteristics of the person actually using the user account at any given point in time. This scenario is more common for client devices and/or user accounts that are used and/or shared by multiple different people (e.g., different members in a single household). As used herein, the term “shared user account” refers to a user account that is used by more than one panelist. As such, shared user accounts include user accounts that are intended to be shared by multiple individuals as well as user accounts that, as a matter of happenstance, are used by multiple individuals (e.g., a child inadvertently remains logged into their parent's user account after the parent used the same computer).
Another source of error in the database proprietor impressions data is based on the concept of misattribution, which arises in situations where multiple different people use the same client device 110 to access media. In some examples, the database proprietor 102 associates a particular impression to a particular registered user based on the registered user being signed into a platform provided by the database proprietor 102. For example, if a particular person signs into their Google account and begins watching a YouTube video on a particular client device 110, that person will be attributed with an impression for an ad served during the video because the person was signed in at the time. However, there may be instances where the person finishes using the client device 110 but does not sign out of his or her Google account. Thereafter, a second different person (e.g., a different member in the family of the first person) begins using the client device 110 to view another YouTube video. Although the second person is now accessing media via the client device 110, ad impressions during this time will still be attributed to the first person because the first person is the one who is still indicated as being signed in (e.g., the user account of the first person has become a shared user account). Thus, there is likely to be circumstances where the actual person exposed to media 108 is misattributed to a different registered user of the database proprietor 102 and/or an unregistered user. The AME panel data (which includes an indication of the actual person using the panelist client devices 112 at any given moment) can be used to correct for misattribution in the demographic information in the database proprietor impressions data. As mentioned above, in some situations, the AME panel data may itself include misattribution errors. Accordingly, in some examples, the AME panel data may first be corrected for misattribution before the AME panel data is used to correct misattribution in the database proprietor impressions data. An example methodology to correct for misattribution in the database proprietor impressions data is described in Singh et al., U.S. Pat. No. 10,469,903, which is hereby incorporated herein by reference in its entirety.
Misattribution can also occur where there are multiple shared user accounts on the same device. For example, a parent may log into his or her user account and forget to log out after using a communal desktop computer. Subsequently, a child may use the computer for a time before realizing that the parent's user account is logged in. Upon realization that the parent's user account is logged in, the child may log out of the parent's user account, and log into the child's user account. After the child completes use of the communal desktop computer, he or she may forget to log out. Subsequently, the child's brother or sister may use the communal family computer without realizing that the child's user account is logged in. Accordingly, when multiple shared user accounts are present in a panelist household, self-declared demographic information may be wrong with respect to the demographic characteristics of the person actually using the user account at any given point in time for multiple accounts. Here, as described above, the AME panel data (which includes an indication of the actual person using the panelist client devices 112 at any given moment) can be used to correct for misattribution in the demographic information in the database proprietor impressions data.
Another problem with the database proprietor impressions data is that of non-coverage. Non-coverage refers to impressions recorded by the database proprietor 102 that cannot be matched to a particular registered user of the database proprietor 102. The inability of the database proprietor 102 to match a particular impression to a particular user can occur for several reasons including that the registered user is not signed in at the time of the media impression, that the user has not established an account with the database proprietor 102, that the registered user has enabled Limited Ad Tracking (LAT) to prevent the user account from being associated with ad impressions, or that the content associated with the media being monitored corresponds to children's content (for which user-based tracking is not performed). While the inability of the database proprietor 102 to match and assign a particular impression to a particular registered user is not necessarily an error in the database proprietor impressions data, it does undermine the ability to reliably estimate the total unique audience size for (e.g., the number of unique individuals that were exposed to) a particular media item. For example, assume that the database proprietor 102 records a total of 11,000 impressions for media 108 in a particular advertising campaign. Further assume that of those 11,000 impressions, the database proprietor 102 is able to match 10,000 impressions to a total of 5,000 different users (e.g., each user was exposed to the media on average 2 times) but is unable to match the remaining 1,000 impressions to particular users. Relying solely on the database proprietor impressions data, in this example, there is no way to determine whether the remaining 1,000 impressions should also be attributed to the 5,000 users already exposed at least once to the media 108 (for a total audience size of 5,000 people) or if one or more of the remaining 1,000 impressions should be attributed to other users not among the 5,000 already identified (for a total audience size of up to 6,000 people (if every one of the 1,000 impressions was associated with a different person not included in the matched 5,000 users)). In some examples disclosed herein, the AME panel data can be used to estimate the distribution of impressions across different users associated with the non-coverage portion of impressions in the database proprietor impressions data to thereby estimate a total audience size for the relevant media 108.
Another confounding factor to the estimation of the total unique audience size for media based on the database proprietor impressions data is the existence of multiple user accounts of a single registered user. More particular, in some situations a particular individual may establish multiple accounts with the database proprietor 102 for different purposes (e.g., a personal account, a work account, a shared user account, etc.). Such a situation can result in a larger number of different users being identified as audience members to media 108 than the actual number of individuals exposed to the media 108. For example, assume that a particular person registers three user accounts with the database proprietor 102 and is exposed to the media 108 once while signed into each of the three different accounts for a total of three impressions. In this scenario, the database proprietor 102 would match each impression to a different registered user based on the different user accounts making it appear that three different people were exposed to the media 108 when, in fact, only one person was exposed to the media three different times. Examples disclosed herein use the AME panel data in conjunction with the database proprietor impressions data to estimate an actual unique audience size from the potentially inflated number of apparently unique users exposed to the media 108.
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In some examples, the AME intermediary merged data is analyzed by an adjustment factor analyzer 134 to calculate adjustment or calibration factors that may be stored in an adjustment factors database 136 within an AME output data store 138 of the AME proprietary cloud environment 126. In some examples, the adjustment factor analyzer 134 calculates different types of adjustment factors to account for different types of errors and/or biases in the database proprietor impressions data. For instance, a multi-account adjustment factor corrects for the situation of a single registered user accessing media using multiple different user accounts associated with the database proprietor 102. A signed-out adjustment factor corrects for non-coverage associated with registered users that access media while signed out of their account associated with the database proprietor 102 (so that the database proprietor 102 is unable to associate the impression with the registered users). In some examples, the adjustment factor analyzer 134 is able to directly calculate the multi-account adjustment factor and the signed-out adjustment factor in a deterministic manner.
While the multi-account adjustment factors and the signed-out adjustment factors may be deterministically calculated, correcting for falsified or otherwise incorrect demographic information (e.g., incorrectly self-declared ages) of registered users of the database proprietor 102 cannot be solved in such a direct and deterministic manner. Rather, in some examples, a machine learning model is developed to analyze and predict the correct ages of registered users of the database proprietor 102. Specifically, as shown in
More particularly, in some examples, self-declared demographics (e.g., the self-declared age) of registered users of the database proprietor 102, along with other covariates associated with the registered users, are used as the input variables or features used to train a model to predict the correct demographics (e.g., correct age) of the registered users as validated by the AME panel data, which serves as the truth data or training labels for the demographic correction model generation. However, in some examples, the self-declared age or other demographics of a registered user signed into a user account on a panelist client device 112 may not match the age or other demographics of the primary user of the user account.
As used herein, the term “primary user of a user account” refers to an individual whose demographic information an AME should attribute to a user account based on a primary user identification algorithm. While in some instances identifying the primary user of a user account may be straightforward (e.g., when a user account is used by only one person), in other cases the identity of the primary user of a user account is not as forthcoming (e.g., when multiple people use the same user account). For example, a parent that buys a computer for a child may log into the computer with the parent's user account with the database proprietor 102 despite the child being the primary user of the parent's user account. Thus, because the registered user of a user account is not always the primary user of the user account, in some examples (e.g., in the case of a shared user account), merely relying on the demographics of the registered user may be insufficient to accurately monitor the demographics of the person exposed to media. By identifying the primary user of the user account, examples disclosed herein determine the demographics of the person that accessed media. Therefore, examples disclosed herein generate reliable demographics and/or other covariates associated with the registered users to train models to predict correct demographics.
In some examples, different demographic correction model(s) may be developed to correct for different types of demographic information that needs correcting. For instance, in some examples, a first model can be used to correct the self-declared age of registered users of the database proprietor 102 and a second model can be used to correct the self-declared gender of the registered users. Once the model(s) have been trained and validated based on the AME panel data, the model(s) are stored in a demographic correction models database 142.
As mentioned above, there are many different types of covariates collected and/or generated by the database proprietor 102. In some examples, the covariates provided by the database proprietor 102 may include a certain number (e.g., 100) of the top search result click entities and/or video watch entities for every user during a most recent period of time (e.g., for the last month). These entities are integer identifiers (IDs) that map to a knowledge graph of all entities for the search result clicks and/or videos watched. That is, as used in this context, an entity corresponds to a particular node in a knowledge graph maintained by the database proprietor 102. In some examples, the total number of unique IDs in the knowledge graph may number in the tens of millions. More particularly, for example, YouTube videos are classified across roughly 20 million unique video entity IDs and Google search results are classified across roughly 25 million unique search result entity IDs. In addition to the top search result click entities and/or video watch entities, the database proprietor 102 may also provide embeddings for these entities. An embedding is a numerical representation (e.g., a vector array of values) of some class of similar objects, images, words, and the like. For example, a particular user that frequently searches for and/or views cat videos may be associated with a feature embedding representative of the class corresponding to cats. Thus, feature embeddings translate relatively high dimensional vectors of information (e.g., text strings, images, videos, etc.) into a lower dimensional space to enable the classification of different but similar objects.
In some examples, multiple embeddings may be associated with each search result click entity and/or video watch entity. Accordingly, assuming the top 100 search result entities and video watch entities are provided among the covariates and that 16 dimension embeddings are provided for each such entity, this results in a 100×16 matrix of values for every user, which may be too much data to process during generation of the demographic correction models as described above. Accordingly, in some examples, the dimensionality of the matrix is reduced to a more manageable size to be used as an input feature for the demographic correction model generation.
In some examples, a process is implemented to track different demographic correction model experiments over time to achieve high quality (e.g., accurate) models and also for auditing purposes. Accomplishing this objective within the context of the privacy-protected cloud environment 106 presents several unique challenges because the model features (e.g., inputs and hyperparameters) and model performance (e.g., accuracy) are stored separately to satisfy the privacy constraints of the environment.
In some examples, a model analyzer 144 may implement and/or use one or more demographic correction models to generate predictions and/or inferences as to the actual demographics (e.g., actual ages) of registered users associated with media impressions logged by the database proprietor 102. That is, in some examples, as shown in
As described above, in some examples, the database proprietor 102 may identify a particular registered user as corresponding to a particular impression based on the registered user being signed into the database proprietor 102. However, there are circumstances where the individual corresponding to the user account is not the actual person that was exposed to the relevant media. Accordingly, merely inferring a correct demographic (e.g., age) of the registered user associated with the signed in user account may not be the correct demographic of the actual person to which a particular media impression should be attributed. In other words, whereas the AME panelist data and the database proprietor impressions data is matched at the impression level, demographic correction is implemented at the user level. Therefore, before generating the demographic correction model, a method to reduce logged impressions to individual users is first implemented so that the demographic correction model can be reliably implemented. In particular, as shown in the illustrated example of
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In some examples, the example model generator 140 implements example means for generating models. The means for generating models is implemented by executable instructions such as that implemented by at least block 304 of
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In examples disclosed herein, the communication bus 216 may be implemented using any suitable wired and/or wireless communication. In additional or alternative examples, the communication bus 216 includes software, machine readable instructions, and/or communication protocols by which information is communicated among the network interface 206, the user account controller 208, the impression controller 210, the demographic controller 212, and/or the score management controller 214.
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In some examples, the second member of the household may use the computer far more often than the first member of the household. In such examples, the demographics of the second member of the household may not match the demographics of the registered user (e.g., the first member of the household). In some such examples, the impression-to-user analyzer 202 may determine that the second member of the household is the primary user of the account (e.g., based on the primary user identification algorithm disclosed herein) even though the first member created the account in his or her own name and included demographics information (e.g., a self-declared age) for himself or herself. With the primary user identified, the impression-to-user analyzer 202 adjusts demographic information of user accounts to reflect the primary users of the user accounts.
In some examples, the example impression-to-user analyzer 202 implements example means for adjusting demographics. The means for adjusting demographics is implemented by executable instructions such as that implemented by at least block 302 of
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In some examples, the example network interface 206 implements example means for interfacing. The means for interfacing is implemented by executable instructions such as that implemented by at least block 406 of
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As described above, in some examples, the data matching analyzer 128 matches user accounts of the database proprietor 102 with AME panelists based on the unique impression identifiers (e.g., CPNs) collected in connection with the media impressions logged by both the database proprietor 102 and the AME 104. For example, as permitted by the laws and/or regulations of the geographic location of registered users and/or panelists, the data matching analyzer 128 may utilize the AME panel data such as a panelist's name, a panelist's location, among others, to compare against similar fields provided by the database proprietor 102. If the data matching analyzer 128 determines that the AME panel data matches similar data provided by the database proprietor 102, the data matching analyzer 128 obtains the impression identifier (e.g., a CPN) associated with each impression experienced by an individual logged in to the user account (e.g., the registered user). In this manner, the data matching analyzer 128 maps the data associated with the impression identifier to the AME panel data.
In some examples, the example user account controller 208 implements example means for managing user accounts. The means for managing user accounts is implemented by executable instructions such as that implemented by at least blocks 504, 530, and 532 of
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For example, the percentages indicate the proportion of impressions logged for the selected user account that were actually experienced by each panelist associated with the selected user account. For example, for a shared user account, 30% of the impressions associated with the shared user account may be experienced by a first parent in a household (e.g., a father), 10% of the impressions associated with the shared user account may be experienced by a second parent in the household (e.g., a mother), and 60% of the impressions associated with the shared user account may be experienced by a child in the household.
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In some examples, the example impression controller 210 implements example means for managing impressions. The means for managing impressions is implemented by executable instructions such as that implemented by at least blocks 506 and 508 of
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For example, the demographic controller 212 compares the self-declared gender of the selected user account (indicated in the database proprietor impressions data) to respective genders of the panelists associated with the selected user account (e.g., as indicated from the AME panel data). Based on the comparison, the demographic controller 212 defines respective gender scores for the panelists. In some examples, if the self-declared gender of the selected user account matches the gender of a first panelist associated with the selected user account (e.g., indicated from the AME panel data), the demographic controller 212 defines a full gender score (e.g., 5/5) for the first panelist. In some examples, if the self-declared gender of the selected user account is not stated or undetermined, the demographic controller 212 defines a zero gender score (e.g., 0/5) for the first panelist. In additional or alternative examples, different scales for scoring may be used.
In some examples, the self-declared gender of the selected user account may be nonbinary. In such examples, the self-declared gender of the selected user account will not match the gender of any panelist because the AME panel data is collected on a binary scale (e.g., male or female). In such examples, if the self-declared gender of the selected user account is non-binary and does not match the gender of the first panelist indicated from the AME panel data, the demographic controller 212 assigns a zero gender score (e.g., 0/5) for the first panelist. In additional or alternative examples, different scales for scoring may be used.
In some examples, the self-declared gender of the selected user account may conflict with the gender of a panelist indicated from the AME panel data. For example, if the self-declared gender of the selected user account is male and the gender of a first panelist associated with the selected user account is female (as indicated from the AME panel data), the demographic controller 212 assigns a negative gender score (e.g., −5/5) for the first panelist. In additional or alternative examples, different scales for scoring may be used. For example, the gender scores could be scaled to include only positive and zero values.
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In some examples, the example demographic controller 212 implements example means for managing demographics. The means for managing demographics is implemented by executable instructions such as that implemented by at least blocks 510, 512, 514, and 516 of
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For example, to determine the respective total scores for the panelists, the score management controller 214 sums the respective impression score, the respective gender score, and the respective age score of the panelists. The score management controller 214 determines the total score for a panelist to be the sum of the score the panelist attained in each category (e.g., impression score, gender score, and age score) out of the total possible points for the sum of those categories. Thus, if a first panelist has an impression score of four out of five (e.g., 4/5), a gender score of five out of five (e.g., 5/5), and an age score of two out of five (e.g., 2/5), the score management controller 214 determines the total score for the first panelist to be 11 (e.g., 11=4+5+2) out of 15 (15=5+5+5).
Examples disclosed herein use the same scale for impression scores, gender scores, and age score (e.g., a five-point scale, x/5, etc.). In this manner, the impression scores, gender scores, and age scores are normalized which allows for equal weighting for the categories (e.g., impression score, gender, score, age score). In additional or alternative examples, different scales can be used for each category. In this manner, if a category is considered more important, the category can be weighed more by increasing the possible score (e.g., a ten-point scale, x/10, etc.).
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In this manner, only the panelist with the highest percentage of impressions can be selected as the primary user of the selected user account, provided the percent satisfied the first threshold (e.g., exceeds 50%). In additional or alternative examples, a different percentage can be used for the first threshold. If multiple total scores are based on percentages of impressions that satisfy the first threshold, the score management controller 214 selects a highest one of the total scores.
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In some examples, the example score management controller 214 implements example means for managing scores. The means for managing scores is implemented by executable instructions such as that implemented by at least block 402 and 404 of
After the impression-to-user analyzer 202 corrects falsified and/or otherwise incorrect demographic data for panelists, the model generator 140 may use the corrected demographic data to train one or more demographic correction models to generate predictions and/or inferences as to the actual demographics (e.g., actual ages) of registered users (e.g., non-panelists) of the database proprietor 102. Returning to
The data aggregator 148 may aggregate data in different ways for different types of audience measurement metrics. For instance, at the highest level, the aggregated data may provide the total impression count and total number of registered users (e.g., estimated audience size) exposed to the media 108 for a particular media campaign. As mentioned above, the total number of registered users reported by the data aggregator 148 is based on the total number of unique user accounts matched to impressions but does not include the individuals associated with impressions that were not matched to a particular registered user (e.g., non-coverage). However, the total number of unique user accounts does not account for the fact that a single individual may correspond to more than one user account (e.g., multi-account users), and does not account for situations where a person other than a registered user was exposed to the media 108 (e.g., misattribution). These errors in the aggregated data may be corrected based on the adjustment factors stored in the adjustment factors database 136. Further, in some examples, the aggregated data may include an indication of the demographic composition of the registered users represented in the aggregated data (e.g., number of males vs females, number of registered users in different age brackets, etc.).
Additionally or alternatively, in some examples, the data aggregator 148 may provide aggregated data that is associated with a particular aspect of a media campaign. For instance, the data may be aggregated based on particular sites (e.g., all media impressions served on YouTube.com). In other examples, the data may be aggregated based on placement information (e.g., aggregated based on particular primary content videos accessed by users when the media advertisement was served). In other examples, the data may be aggregated based on device type (e.g., impressions served via a desktop computer versus impressions served via a mobile device). In other examples, the data may be aggregated based on a combination of one or more of the above factors and/or based on any other relevant factor(s).
In some examples, the privacy constraints imposed on the data within the privacy-protected cloud environment 106 include a limitation that data cannot be extracted (even when aggregated) for less than a threshold number of individuals (e.g., 50 individuals). Accordingly, if the particular metric being sought includes less than the threshold number of individuals, the data aggregator 148 will not provide such data. For instance, if the threshold number of individuals is 50 but there are only 46 females in the age range of 18-25 that were exposed to particular media 108, the data aggregator 148 would not provide the aggregate data for females in the 18-25 age bracket. Such privacy constraints can leave gaps in the audience measurement metrics, particularly in locations where the number of panelists is relatively small. Accordingly, in some examples, when audience measurement is not available for a particular demographic segment of interest in a particular region (e.g., a particular country), the audience measurement metrics in one or more comparable region(s) may be used to impute the metrics for the missing data in the first region of interest. In some examples, the particular metrics imputed from comparable regions is based on a comparison of audience metrics for which data is available in both regions. For instance, while data for females in the 18-25 bracket may be unavailable, assume that data for females in the 26-35 age bracket is available. The metrics associated with the 26-35 age bracket in the region of interests may be compared with metrics for the 26-35 age bracket in other regions and the regions with the closest metrics to the region of interest may be selected for use in calculating imputation factor(s).
As shown in the illustrated example, both the adjustment factors database 136 and the aggregated campaigns data database 150 are included within the AME output data store 138 of the AME proprietary cloud environment 126. As mentioned above, in some examples, the AME proprietary cloud environment 126 is provided by the database proprietor 102 and enables data to be provided to and retrieved from the privacy-protected cloud environment. In some examples, the aggregated campaign data and the adjustment factors are subsequently transferred to a separate computing apparatus 152 of the AME 104 for analysis by an audience metrics analyzer 154. In some examples, the separate computing apparatus may be omitted with its functionality provided by the AME proprietary cloud environment 126. In other examples, the AME proprietary cloud environment 126 may be omitted with the adjustment factors and the aggregated data provided directly to the computing apparatus 152. Further, in this example, the AME panel data database 122 is within the AME first party data store 124, which is shown as being separate from the AME output data store 138. However, in other examples, the AME first party data store 124 and the AME output data store 138 may be combined.
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While an example manner of implementing the privacy-protected cloud environment 106 of
Flowchart representative of example hardware logic, machine readable instructions, hardware implemented state machines, and/or any combination thereof for implementing aspects of the privacy-protected cloud environment 106 of
The machine readable instructions described herein may be stored in one or more of a compressed format, an encrypted format, a fragmented format, a compiled format, an executable format, a packaged format, etc. Machine readable instructions as described herein may be stored as data or a data structure (e.g., portions of instructions, code, representations of code, etc.) that may be utilized to create, manufacture, and/or produce machine executable instructions. For example, the machine readable instructions may be fragmented and stored on one or more storage devices and/or computing devices (e.g., servers) located at the same or different locations of a network or collection of networks (e.g., in the cloud, in edge devices, etc.). The machine readable instructions may require one or more of installation, modification, adaptation, updating, combining, supplementing, configuring, decryption, decompression, unpacking, distribution, reassignment, compilation, etc. in order to make them directly readable, interpretable, and/or executable by a computing device and/or other machine. For example, the machine readable instructions may be stored in multiple parts, which are individually compressed, encrypted, and stored on separate computing devices, wherein the parts when decrypted, decompressed, and combined form a set of executable instructions that implement one or more functions that may together form a program such as that described herein.
In another example, the machine readable instructions may be stored in a state in which they may be read by processor circuitry, but require addition of a library (e.g., a dynamic link library (DLL)), a software development kit (SDK), an application programming interface (API), etc. in order to execute the instructions on a particular computing device or other device. In another example, the machine readable instructions may need to be configured (e.g., settings stored, data input, network addresses recorded, etc.) before the machine readable instructions and/or the corresponding program(s) can be executed in whole or in part. Thus, machine readable media, as used herein, may include machine readable instructions and/or program(s) regardless of the particular format or state of the machine readable instructions and/or program(s) when stored or otherwise at rest or in transit.
The machine readable instructions described herein can be represented by any past, present, or future instruction language, scripting language, programming language, etc. For example, the machine readable instructions may be represented using any of the following languages: C, C++, Java, C#, Perl, Python, JavaScript, HyperText Markup Language (HTML), Structured Query Language (SQL), Swift, etc.
As mentioned above, the example processes of
“Including” and “comprising” (and all forms and tenses thereof) are used herein to be open ended terms. Thus, whenever a claim employs any form of “include” or “comprise” (e.g., comprises, includes, comprising, including, having, etc.) as a preamble or within a claim recitation of any kind, it is to be understood that additional elements, terms, etc. may be present without falling outside the scope of the corresponding claim or recitation. As used herein, when the phrase “at least” is used as the transition term in, for example, a preamble of a claim, it is open-ended in the same manner as the term “comprising” and “including” are open ended. The term “and/or” when used, for example, in a form such as A, B, and/or C refers to any combination or subset of A, B, C such as (1) A alone, (2) B alone, (3) C alone, (4) A with B, (5) A with C, (6) B with C, and (7) A with B and with C. As used herein in the context of describing structures, components, items, objects and/or things, the phrase “at least one of A and B” is intended to refer to implementations including any of (1) at least one A, (2) at least one B, and (3) at least one A and at least one B. Similarly, as used herein in the context of describing structures, components, items, objects and/or things, the phrase “at least one of A or B” is intended to refer to implementations including any of (1) at least one A, (2) at least one B, and (3) at least one A and at least one B. As used herein in the context of describing the performance or execution of processes, instructions, actions, activities and/or steps, the phrase “at least one of A and B” is intended to refer to implementations including any of (1) at least one A, (2) at least one B, and (3) at least one A and at least one B. Similarly, as used herein in the context of describing the performance or execution of processes, instructions, actions, activities and/or steps, the phrase “at least one of A or B” is intended to refer to implementations including any of (1) at least one A, (2) at least one B, and (3) at least one A and at least one B.
As used herein, singular references (e.g., “a”, “an”, “first”, “second”, etc.) do not exclude a plurality. The term “a” or “an” item, as used herein, refers to one or more of that item. The terms “a” (or “an”), “one or more”, and “at least one” can be used interchangeably herein. Furthermore, although individually listed, a plurality of means, elements or method actions may be implemented by, e.g., a single unit or processor. Additionally, although individual features may be included in different examples or claims, these may possibly be combined, and the inclusion in different examples or claims does not imply that a combination of features is not feasible and/or advantageous.
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In some examples, the survey data serves as truth data that is used by an individualization model generator 608 to train and validate a model (referred to herein as an individualization model) that can predict the true user of a mobile device (when such information is unavailable) based on information that the AME 104 does know for certain and/or has access to through the collection of panel data via the meter 115. Once the individualization model has been trained and validated based on the AME panel data, the model is stored in an individualization models database 610. In some examples, an individualization model analyzer 612 may implement the individualization model to generate predictions and/or inferences as to the actual users associated with media impressions captured by the audience measurement meters 115 of associated mobile panelist client devices 112. That is, in some examples, as shown in
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In some examples, only the predictions for the feature combinations analyzed by the individualization model analyzer 612 (e.g., daypart, genre, category, device type, etc.) that match the feature combinations (e.g., covariates) provided by the database proprietor 102 are retained in the impression-level individualized data database 616. For example, assume that daypart is the only feature used in the individualization model. Further assume that for a particular panelist client device 112, the individualization model predicts that person A is the actual user of the device when the daypart=morning, person B is the actual user of the device when the daypart=midday, and person C is the actual user of the device when the daypart=evening. All of these predictions are stored within the device-level individuals data database 614 in connection with the particular panelist client device 112. Now assume that the database proprietor impressions data indicates that a particular impression that was logged for the particular panelist client device 112 occurred when daypart=midday. In such a situation, person B would be assigned as the actual user for that particular impression in the impression-level individualized data database 616 and the predictions for the morning and evening dayparts would not be used (at least for that particular impression). Once the AME intermediary merged data has been corrected in this manner, the process to calculate adjustment factors and perform other analyses as disclosed herein proceeds in a similar manner as outlined above.
The processor platform 700 of the illustrated example includes a processor 712. The processor 712 of the illustrated example is hardware. For example, the processor 712 can be implemented by one or more integrated circuits, logic circuits, microprocessors, GPUs, DSPs, or controllers from any desired family or manufacturer. The hardware processor 712 may be a semiconductor based (e.g., silicon based) device. In this example, the processor 712 implements the example network interface 206, the example user account controller 208, the example impression controller 210, the example demographic controller 212, the example score management controller 214, and the model generator 140.
The processor 712 of the illustrated example includes a local memory 713 (e.g., a cache). The processor 712 of the illustrated example is in communication with a main memory including a volatile memory 714 and a non-volatile memory 716 via a bus 718. The volatile memory 714 may be implemented by Synchronous Dynamic Random Access Memory (SDRAM), Dynamic Random Access Memory (DRAM), RAMBUS® Dynamic Random Access Memory (RDRAM®) and/or any other type of random access memory device. The non-volatile memory 716 may be implemented by flash memory and/or any other desired type of memory device. Access to the main memory 714, 716 is controlled by a memory controller.
The processor platform 700 of the illustrated example also includes an interface circuit 720. The interface circuit 720 may be implemented by any type of interface standard, such as an Ethernet interface, a universal serial bus (USB), a Bluetooth® interface, a near field communication (NFC) interface, and/or a PCI express interface.
In the illustrated example, one or more input devices 722 are connected to the interface circuit 720. The input device(s) 722 permit(s) a user to enter data and/or commands into the processor 712. The input device(s) can be implemented by, for example, an audio sensor, a microphone, a camera (still or video), a keyboard, a button, a mouse, a touchscreen, a track-pad, a trackball, isopoint and/or a voice recognition system.
One or more output devices 724 are also connected to the interface circuit 720 of the illustrated example. The output devices 724 can be implemented, for example, by display devices (e.g., a light emitting diode (LED), an organic light emitting diode (OLED), a liquid crystal display (LCD), a cathode ray tube display (CRT), an in-place switching (IPS) display, a touchscreen, etc.), a tactile output device, a printer and/or speaker. The interface circuit 720 of the illustrated example, thus, typically includes a graphics driver card, a graphics driver chip and/or a graphics driver processor.
The interface circuit 720 of the illustrated example also includes a communication device such as a transmitter, a receiver, a transceiver, a modem, a residential gateway, a wireless access point, and/or a network interface to facilitate exchange of data with external machines (e.g., computing devices of any kind) via a network 726. The communication can be via, for example, an Ethernet connection, a digital subscriber line (DSL) connection, a telephone line connection, a coaxial cable system, a satellite system, a line-of-site wireless system, a cellular telephone system, etc.
The processor platform 700 of the illustrated example also includes one or more mass storage devices 728 for storing software and/or data. Examples of such mass storage devices 728 include floppy disk drives, hard drive disks, compact disk drives, Blu-ray disk drives, redundant array of independent disks (RAID) systems, and digital versatile disk (DVD) drives.
The machine executable instructions 732 of
From the foregoing, it will be appreciated that example methods, apparatus, and articles of manufacture have been disclosed that enable the generation of accurate and reliable audience measurement metrics for Internet-based media without the use of third-party cookies and/or tags that have been the standard approach for monitoring Internet media for many years. This is accomplished by merging AME panel data with database proprietor impressions data within a privacy-protected cloud based environment. The nature of the cloud environment and the privacy constraints imposed thereon as well as the nature in which the database proprietor collects the database proprietor impression data present technological challenges contributing to limitations in the reliability and/or completeness of the data.
However, examples disclosed herein overcome these difficulties by generating adjustment factors and/or machine learning models based on the AME panel data. The disclosed examples correct for misreported demographic data associated with a user account by assessing differences between demographic data provided by databases proprietors and similar demographic data provided by an AME. For example, the disclosed methods, apparatus, and articles of manufacture correct computer errors in audience metrics generated as a result of registered users reporting incorrect demographics. Registered users can purposefully and/or inadvertently report incorrect demographic information due to the nature and medium of reporting being electronic (e.g., via a computer and/or the Internet). The disclosed methods, apparatus, and articles of manufacture correct for this error by establishing a reliable training dataset relating panelist primary users to panelist registered users. Having established a reliable training dataset, examples disclosed herein train one or more machine learning models to correct demographic information for non-panelist registered users.
Example methods, apparatus, systems, and articles of manufacture to adjust demographic information of user accounts to reflect primary users of the user accounts are disclosed herein. Further examples and combinations thereof include the following:
Example 1 includes an apparatus comprising memory, and processor circuitry to execute instructions that cause the processor circuitry to at least determine a first total score for a first panelist associated with a panelist user account based on at least one of a first impression score, a first age score, or a first gender score, determine a second total score for a second panelist associated with the panelist user account based on at least one of a second impression score, a second age score, or a second gender score, and in response to determining that the first total score satisfies a threshold, store demographics of the first panelist for the panelist user account.
Example 2 includes the apparatus of example 1, wherein the processor circuitry is to determine a first percentage of impressions for the panelist user account that are attributed to the first panelist, determine a second percentage of impressions for the panelist user account that are attributed to the second panelist, define the first impression score for the first panelist based on the first percentage of impressions, and define the second impression score for the second panelist based on the second percentage of impressions.
Example 3 includes the apparatus of example 1, wherein the processor circuitry is to compare a self-declared gender of the panelist user account to a first gender of the first panelist and a second gender of the second panelist, define the first gender score for the first panelist based on the comparison, and define the second gender score for the second panelist based on the comparison.
Example 4 includes the apparatus of example 1, wherein the processor circuitry is to compare a self-declared age of the panelist user account to a first age of the first panelist and a second age of the second panelist, define the first age score for the first panelist based on the comparison, and define the second age score for the second panelist based on the comparison.
Example 5 includes the apparatus of example 1, wherein the processor circuitry is to determine whether the first total score satisfies the threshold.
Example 6 includes the apparatus of example 1, wherein the processor circuitry is to, in response to determining that the first total score does not satisfy the threshold, disregard the panelist user account.
Example 7 includes the apparatus of example 1, wherein the threshold is a first threshold and the processor circuitry is to determine whether a first percentage of impressions for the panelist user account that are attributed to the first panelist and on which the first total score is based satisfies a second threshold, and in response to the first total score satisfying the first threshold and the first percentage of impressions satisfying the second threshold, store the demographics of the first panelist for the panelist user account.
Example 8 includes the apparatus of example 1, wherein the processor circuitry is to generate one or more demographic correction models based on the demographics of the first panelist.
Example 9 includes an apparatus comprising a score management controller to determine a first total score for a first panelist associated with a panelist user account based on at least one of a first impression score, a first age score, or a first gender score, and determine a second total score for a second panelist associated with the panelist user account based on at least one of a second impression score, a second age score, or a second gender score, and a network interface to, in response to determining that the first total score satisfies a threshold, store demographics of the first panelist for the panelist user account.
Example 10 includes the apparatus of example 9, further including an impression controller to determine a first percentage of impressions for the panelist user account that are attributed to the first panelist, determine a second percentage of impressions for the panelist user account that are attributed to the second panelist, define the first impression score for the first panelist based on the first percentage of impressions, and define the second impression score for the second panelist based on the second percentage of impressions.
Example 11 includes the apparatus of example 9, further including a demographic controller to compare a self-declared gender of the panelist user account to a first gender of the first panelist and a second gender of the second panelist, define the first gender score for the first panelist based on the comparison, and define the second gender score for the second panelist based on the comparison.
Example 12 includes the apparatus of example 9, further including a demographic controller to compare a self-declared age of the panelist user account to a first age of the first panelist and a second age of the second panelist, define the first age score for the first panelist based on the comparison, and define the second age score for the second panelist based on the comparison.
Example 13 includes the apparatus of example 9, wherein the score management controller is to determine whether the first total score satisfies the threshold.
Example 14 includes the apparatus of example 9, wherein the score management controller is to, in response to determining that the first total score does not satisfy the threshold, disregard the panelist user account.
Example 15 includes the apparatus of example 9, wherein the threshold is a first threshold, the score management controller is to determine whether a first percentage of impressions for the panelist user account that are attributed to the first panelist and on which the first total score is based satisfies a second threshold, and the network interface is to, in response to the first total score satisfying the first threshold and the first percentage of impressions satisfying the second threshold, store the demographics of the first panelist for the panelist user account.
Example 16 includes the apparatus of example 9, further including a model generator to generate one or more demographic correction models based on the demographics of the first panelist.
Example 17 includes a non-transitory computer readable storage medium comprising instruction which, when executed, cause at least one processor to at least determine a first total score for a first panelist associated with a panelist user account based on at least one of a first impression score, a first age score, or a first gender score, determine a second total score for a second panelist associated with the panelist user account based on at least one of a second impression score, a second age score, or a second gender score, and in response to determining that the first total score satisfies a threshold, store demographics of the first panelist for the panelist user account.
Example 18 includes the non-transitory computer readable storage medium of example 17, wherein the instructions, when executed, cause the at least one processor to determine a first percentage of impressions for the panelist user account that are attributed to the first panelist, determine a second percentage of impressions for the panelist user account that are attributed to the second panelist, define the first impression score for the first panelist based on the first percentage of impressions, and define the second impression score for the second panelist based on the second percentage of impressions.
Example 19 includes the non-transitory computer readable storage medium of example 17, wherein the instructions, when executed, cause the at least one processor to compare a self-declared gender of the panelist user account to a first gender of the first panelist and a second gender of the second panelist, define the first gender score for the first panelist based on the comparison, and define the second gender score for the second panelist based on the comparison.
Example 20 includes the non-transitory computer readable storage medium of example 17, wherein the instructions, when executed, cause the at least one processor to compare a self-declared age of the panelist user account to a first age of the first panelist and a second age of the second panelist, define the first age score for the first panelist based on the comparison, and define the second age score for the second panelist based on the comparison.
Example 21 includes the non-transitory computer readable storage medium of example 17, wherein the instructions, when executed, cause the at least one processor to determine whether the first total score satisfies the threshold.
Example 22 includes the non-transitory computer readable storage medium of example 17, wherein the instructions, when executed, cause the at least one processor to, in response to determining that the first total score does not satisfy the threshold, disregard the panelist user account.
Example 23 includes the non-transitory computer readable storage medium of example 17, wherein the threshold is a first threshold and the instructions, when executed, cause the at least one processor to determine whether a first percentage of impressions for the panelist user account that are attributed to the first panelist and on which the first total score is based satisfies a second threshold, and in response to the first total score satisfying the first threshold and the first percentage of impressions satisfying the second threshold, store the demographics of the first panelist for the panelist user account.
Example 24 includes the non-transitory computer readable storage medium of example 17, wherein the instructions, when executed, cause the at least one processor to generate one or more demographic correction models based on the demographics of the first panelist.
Example 25 includes a method comprising determining a first total score for a first panelist associated with a panelist user account based on at least one of a first impression score, a first age score, or a first gender score, determining a second total score for a second panelist associated with the panelist user account based on at least one of a second impression score, a second age score, or a second gender score, and in response to determining that the first total score satisfies a threshold, storing demographics of the first panelist for the panelist user account.
Example 26 includes the method of example 25, further including determining a first percentage of impressions for the panelist user account that are attributed to the first panelist, determining a second percentage of impressions for the panelist user account that are attributed to the second panelist, defining the first impression score for the first panelist based on the first percentage of impressions, and defining the second impression score for the second panelist based on the second percentage of impressions.
Example 27 includes the method of example 25, further including comparing a self-declared gender of the panelist user account to a first gender of the first panelist and a second gender of the second panelist, defining the first gender score for the first panelist based on the comparison, and defining the second gender score for the second panelist based on the comparison.
Example 28 includes the method of example 25, further including comparing a self-declared age of the panelist user account to a first age of the first panelist and a second age of the second panelist, defining the first age score for the first panelist based on the comparison, and defining the second age score for the second panelist based on the comparison.
Example 29 includes the method of example 25, further including determining whether the first total score satisfies the threshold.
Example 30 includes the method of example 25, further including, in response to determining that the first total score does not satisfy the threshold, disregarding the panelist user account.
Example 31 includes the method of example 25, wherein the threshold is a first threshold and the method further includes determining whether a first percentage of impressions for the panelist user account that are attributed to the first panelist and on which the first total score is based satisfies a second threshold, and in response to the first total score satisfying the first threshold and the first percentage of impressions satisfying the second threshold, storing the demographics of the first panelist for the panelist user account.
Example 32 includes the method of example 25, further including generating one or more demographic correction models based on the demographics of the first panelist.
Example 33 includes an apparatus comprising means for managing scores to determine a first total score for a first panelist associated with a panelist user account based on at least one of a first impression score, a first age score, or a first gender score, and determine a second total score for a second panelist associated with the panelist user account based on at least one of a second impression score, a second age score, or a second gender score, and means for interfacing to, in response to determining that the first total score satisfies a threshold, store demographics of the first panelist for the panelist user account.
Example 34 includes the apparatus of example 33, further including means for managing impressions to determine a first percentage of impressions for the panelist user account that are attributed to the first panelist, determine a second percentage of impressions for the panelist user account that are attributed to the second panelist, define the first impression score for the first panelist based on the first percentage of impressions, and define the second impression score for the second panelist based on the second percentage of impressions.
Example 35 includes the apparatus of example 33, further including means for managing demographics to compare a self-declared gender of the panelist user account to a first gender of the first panelist and a second gender of the second panelist, define the first gender score for the first panelist based on the comparison, and define the second gender score for the second panelist based on the comparison.
Example 36 includes the apparatus of example 33, further including means for managing demographics to compare a self-declared age of the panelist user account to a first age of the first panelist and a second age of the second panelist, define the first age score for the first panelist based on the comparison, and define the second age score for the second panelist based on the comparison.
Example 37 includes the apparatus of example 33, wherein the means for managing scores are to determine whether the first total score satisfies the threshold.
Example 38 includes the apparatus of example 33, wherein the means for managing scores are to, in response to determining that the first total score does not satisfy the threshold, disregard the panelist user account.
Example 39 includes the apparatus of example 33, wherein the threshold is a first threshold, the means for managing scores are to determine whether a first percentage of impressions for the panelist user account that are attributed to the first panelist and on which the first total score is based satisfies a second threshold, and the means for interfacing are to, in response to the first total score satisfying the first threshold and the first percentage of impressions satisfying the second threshold, store the demographics of the first panelist for the panelist user account.
Example 40 includes the apparatus of example 33, further including means for generating models to generate one or more demographic correction models based on the demographics of the first panelist.
Although certain example methods, apparatus and articles of manufacture have been disclosed herein, the scope of coverage of this patent is not limited thereto. On the contrary, this patent covers all methods, apparatus and articles of manufacture fairly falling within the scope of the claims of this patent.
The following claims are hereby incorporated into this Detailed Description by this reference, with each claim standing on its own as a separate embodiment of the present disclosure.
This patent arises from a non-provisional patent application that claims the benefit of U.S. Provisional Patent Application No. 63/024,260, which was filed on May 13, 2020. U.S. Provisional Patent Application No. 63/024,260 is hereby incorporated herein by reference in its entirety. Priority to U.S. Provisional Patent Application No. 63/024,260 is hereby claimed. Additionally, U.S. patent application Ser. No. 17/316,168, entitled “METHODS AND APPARATUS TO GENERATE COMPUTER-TRAINED MACHINE LEARNING MODELS TO CORRECT COMPUTER-GENERATED ERRORS IN AUDIENCE DATA,” which was filed on May 10, 2021, U.S. patent application Ser. No. 17/317,404, entitled “METHODS AND APPARATUS TO GENERATE AUDIENCE METRICS USING THIRD-PARTY PRIVACY-PROTECTED CLOUD ENVIRONMENTS,” which was filed on May 11, 2021, U.S. patent application Ser. No. 17/317,461, entitled “METHODS AND APPARATUS FOR MULTI-ACCOUNT ADJUSTMENT IN THIRD-PARTY PRIVACY-PROTECTED CLOUD ENVIRONMENTS,” which was filed on May 11, 2021, U.S. patent application Ser. No. 17/317,616, entitled “METHODS AND APPARATUS TO GENERATE AUDIENCE METRICS USING THIRD-PARTY PRIVACY-PROTECTED CLOUD ENVIRONMENTS,” which was filed on May 11, 2021, U.S. patent application Ser. No. 17/318,517, entitled “METHODS AND APPARATUS TO GENERATE AUDIENCE METRICS USING THIRD-PARTY PRIVACY-PROTECTED CLOUD ENVIRONMENTS,” which was filed on May 12, 2021, and U.S. patent application Ser. No. 17/318,420, entitled “METHODS AND APPARATUS TO GENERATE AUDIENCE METRICS USING THIRD-PARTY PRIVACY-PROTECTED CLOUD ENVIRONMENTS,” which was filed on May 12, 2021, are hereby incorporated herein by reference in their entireties.
Number | Date | Country | |
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63024260 | May 2020 | US |