Embodiments are directed to systems, computer-implemented methods, and computer program products for obtaining tax data for tax return preparation programs.
In one embodiment directed to a tax data collection system, the system includes a navigation module configured to obtain user data. The system also includes a data graph including information relating to the user data. The system further includes a knowledge engine configured to map the user data onto a data model using the information from the data graph. Moreover, the system includes an inference engine configured to suggest a system action by analyzing at least the data model after the user data has been mapped thereon.
In one or more embodiments, the user data includes tax data. The information may include a data format, a data label, a data category, and/or a data mapping instruction. The knowledge engine may be configured to validate mapping of the user data onto the data model.
In one or more embodiments, the knowledge engine is configured to determine whether the data model is complete after mapping the user data onto the data model. The inference engine may be configured to identify additional user data based on analyzing at least the data model after the user data has been mapped thereon, when the knowledge engine determines that the data model is not complete. The system action may include obtaining additional user data using the navigation module.
In another embodiment directed to a method for obtaining tax data, the method includes obtaining first user account information. The method also includes accessing a first user account using the first user account information. The method further includes obtaining first user data from the first user account. Moreover, the method includes identifying a second user account based on analysis of first user data. In addition, the method includes requesting second user account information related to the second user account.
In one or more embodiments, the method includes instructing display of a user interface that prompts a user to provide the first user account information. The user interface may include information identifying a plurality of accounts likely to include tax data.
In one or more embodiments, the method also includes obtaining the second user account information. The method further includes accessing the second user account using the second user account information. Moreover, the method includes obtaining second user data from the second user account. In addition, the method includes mapping the second user data onto a data model.
In one or more embodiments, the method includes determining whether the data model is complete after mapping the second user data onto the data model. The first user account information may be selected from the group consisting of a first user account website, a first user account identification, and a first user account password.
In still another embodiment directed to a method for obtaining tax data, the method includes obtaining user account information. The method also includes accessing a user account using the user account information. The method further includes obtaining user data from the user account. Moreover, the method includes identifying the user data as potentially relevant to a tax return of a user. In addition, the method includes presenting the user data to the user to determine a relevance thereof to the tax return of the user.
In one or more embodiments, the method includes instructing display of a user interface that prompts a user to provide the user account information. The user interface may include information identifying a plurality of accounts likely to include tax data.
In one or more embodiments, the method includes presenting a question to the user based on the user data, where the question is configured to elicit an answer related to the relevance of the user data. The method may also include determining that the user data is relevant to the tax return of the user. The method may also include mapping the user data onto a data model. The method may also include determining whether the data model is complete after mapping the user data onto the data model.
In yet another embodiment directed to a computer program product including a non-transitory computer readable storage medium embodying one or more instructions executable by a computer system having a server computer and a tax return preparation computer to perform a process for obtaining tax data, the process includes obtaining first user account information, accessing a first user account using the first user account information, obtaining first user data from the first user account, identifying a second user account based on analysis of first user data, and requesting second user account information related to the second user account.
In still another embodiment directed to a computer program product including a non-transitory computer readable storage medium embodying one or more instructions executable by a computer system having a server computer and a tax return preparation computer to perform a process for obtaining tax data, the process includes obtaining user account information, accessing a user account using the user account information, obtaining user data from the user account, identifying the user data as potentially relevant to a tax return of a user, and presenting the user data to the user to determine a relevance thereof to the tax return of the user.
The foregoing and other aspects of embodiments are described in further detail with reference to the accompanying drawings, in which the same elements in different figures are referred to by common reference numerals, wherein:
In order to better appreciate how to obtain the above-recited and other advantages and objects of various embodiments, a more detailed description of embodiments is provided with reference to the accompanying drawings. It should be noted that the drawings are not drawn to scale and that elements of similar structures or functions are represented by like reference numerals throughout. It will be understood that these drawings depict only certain illustrated embodiments and are not therefore to be considered limiting of scope of embodiments.
During preparation of tax returns, tax data must be acquired to complete the tax return. While tax data can be entered manually by a user/preparer, many electronic tax return preparation systems can acquire some tax data automatically (without human intervention after authorization) or semi-automatically (with minimal human intervention—e.g., provision of financial account authentication information) from third party websites hosted on third party computers through a network, such as the Internet.
Tax return preparation can be performed by the taxpayer, a tax professional, or other preparer using an electronic tax return preparation program. Regardless of who prepares the tax return, a manual tax return preparation system requires the preparer to answer a standard list of questions that are presented in a standard order in an interview/questionnaire format. This can be tedious for the preparer, and result in data entry errors that may have serious financial consequences. The manual tax return preparation process also requires a lengthy time commitment that may be a barrier to tax preparation. While some systems allow for preparers to save returns and resume preparation at a later time, these interruptions can lead to errors related to restarting the process or unfinished tax returns.
Tax data is typically found on paper or electronic documents, which may not be immediately available to the user. Therefore, manually acquiring tax data for tax return preparation may include searching for paper documents, or accessing electronic documents or information from a third party website (“tax data websites”; e.g., payroll processor websites for W-2 information, banking account websites for 1099-INT information, brokerage account websites for 1099-DIV information, etc.) hosted on a third party computer. Consequently, the manual tax return preparation process is often paused or halted one or more times for the user to acquire tax data needed to complete the tax return. These disruptions in the tax return preparation process are opportunities for the user to walk away from the process, which can also lead to errors related to restarting the process or unfinished tax returns.
While preparing a tax returning using an online electronic tax return preparation system, tax data from third party websites can be entered manually by the user, automatically, and/or semi-automatically. Manual data entry typically involves opening a new browser in a new window or a new tab. Tax data obtained from the new browser (e.g., data or electronic documents) must then be manually entered or uploaded into the online electronic tax return preparation system. While this manual process can successfully acquire tax data, it introduces further opportunities for user error, and it can frustrate users who must switch between software experiences.
Alternative to manual tax data entry include automatic and semi-automatic tax data acquisition. Traditionally, acquiring tax data from third party websites through networks has been automated (including automatic and semi-automatic tax data acquisition) using one of two solutions: Application Programming Interface (“API”) connection to a third party computer through a network; and screen scraping of third party webpages accessed through a network.
However, even automatic and semi-automatic tax data acquisition systems have limitations. For instance, existing automatic and semi-automatic tax data acquisition systems require some sort of identification of tax data sources (e.g., from a previous year's tax return or direct user input). Therefore, existing automatic and semi-automatic tax data acquisition systems cannot identify tax data sources that are unknown to the user. For instance, a user may not recognize a tax data source as such. Also, a user may not realize that a new data source can provide tax data. Further, changes in certain data sources (e.g., online banking, financial management systems, and government websites) may provide additional tax data unbeknownst to the user, or result in new tax data sources. Alternatively, changes may render previous tax data sources less useful. Moreover, changes in laws or regulations (e.g., reporting or disclosure rules) may render previous tax data sources more or less useful, and may result in new tax data sources. Navigating this complex web of possible tax data source changes can limit the effectiveness of automatic and semi-automatic tax data acquisition systems, and/or result in unaccounted for tax data. Missing tax data can in turn result in tax return errors that can have serious financial consequences for the taxpayer.
Embodiments describe methods, systems and articles of manufacture for automatically obtaining tax data for tax return preparation programs by analyzing user data to identify tax data sources. In particular, the embodiments describe using navigation modules, data graphs, knowledge engines, and inference engines to implement a system for identifying tax data sources to facilitate obtaining tax data. The system also facilitates obtaining tax data while minimizing user input and effort. The system further facilitates user interaction during tax return preparation.
In one embodiment, the navigation module obtains user data, such as tax data. Next, a knowledge engine maps the user data onto a data model using information from a data graph. The information from the data graph may relate to the user data, and may be data mapping instructions. Then, an inference engine suggests a system action by analyzing the data model including the mapped user data. The system action may be to obtain additional user data using the navigation module, especially when the knowledge engine determines that the data model is incomplete after mapping the user data thereon.
Obtaining user data and mapping the obtained user data to a data graph facilitates automated or semi-automated collection of tax data for electronic tax return preparation by identifying tax data sources applicable to a particular taxpayer. The data graphs organize the tax data needed to prepare the tax return and the iterative process utilizes a navigation module, a knowledge engine, and an inference engine to complete and run the data graphs to automate the tax data collection and tax data source identification processes. Automating the identification of tax data sources and collection of tax data saves users/preparer time and may increase the rate of completion of tax returns by lowering barriers to completion. Even partially automating tax data collection can achieve these goals. Identifying tax data sources can also streamline the user interview/questionnaire process, thereby minimizing required user time and effort.
As used in this application, a “user,” “preparer” or “taxpayer” includes, but is not limited to, a person preparing a tax return using tax return preparation software. The “user,” “preparer” or “taxpayer” may or may not be obligated to file the tax return. As used in this application, a “previous tax return” or “prior tax return” includes, but is not limited to, a tax return (in electronic or hard copy form) for a year before the current tax year. As used in this application, “tax data” includes, but is not limited to, information that may affect a user's income tax burden, including but not limited to, information typically included in a tax return. The term “tax data,” as used in this application, also includes, but is not limited to, partially or fully completed tax forms (electronic, hard copy and images thereof) that include information typically included in a tax return. As used in this application, “tax document” includes, but is not limited to, physical documents containing tax data, and images thereof. As used in this application, “user data” includes, but is not limited to, data that relates to a user.
As used in this application, “financial management program” or “financial management system” includes, but is not limited to, software that oversees and governs an entity's income, expenses, and assets. An exemplary financial management system is MINT Financial Management Software, which is available from Intuit Inc. of Mountain View, California. A financial management system is executed to assist a user with managing its finances. Financial management systems manage financial transaction data from financial transaction generators such as accounts including checking, savings, money market, credit card, stock, loan, mortgage, payroll or other types of account. Such financial transaction generators can be hosted at a financial institution such as a bank, a credit union, a loan services or a brokerage. Financial transaction data may include, for example, account balances, transactions (e.g., deposits, withdraws, and bill payments), debits, credit card transactions (e.g., for merchant purchases). Financial management systems can also obtain financial transaction data directly from a merchant computer or a point of sale terminal. Financial management systems can include financial transaction data aggregators that manage and organize financial transaction data from disparate sources. While certain embodiments are described with reference to MINT Financial Management Software, the embodiments described herein can include other financial management systems such as QUICKEN Financial Management Software, QUICKRECIPTS Financial Management Software, FINANCEWORKS Financial Management Software, Microsoft Money Financial Management Software and YODLEE Financial Management Software (available from Yodlee, Inc. of Redwood City, California).
As used in this application, “computer,” “computer device,” or “computing device” includes, but is not limited to, a computer (stationary/desktop or portable/laptop) and a computer or computing device of a handheld mobile communication device, smartphone and tablet computing device such as an IPHONE or an IPAD (available from Apple Inc. of Cupertino, California). As used in this application, “tax preparation system,” “tax preparation computing device,” “tax preparation computer,” “tax preparation software,” “tax preparation module,” “tax preparation application,” “tax preparation program,” “tax return preparation system,” “tax return preparation computing device,” “tax return preparation computer,” “tax return preparation software,” “tax return preparation module,” “tax return preparation application,” or “tax return preparation program” includes, but is not limited to, one or more separate and independent software and/or hardware components of a computer that must be added to a general purpose computer before the computer can prepare tax returns, and computers having such components added thereto.
As used in this application, “user computer” or “user computing device” includes, but is not limited to, one or more separate and independent software and/or hardware components of a computer that must be added to a general purpose computer before the computer can communicate with a server computer and display implement a user interface for interaction with a user, and computers having such components added thereto. As used in this application, “server,” “server computer” or “server computing device” includes, but is not limited to, one or more separate and independent software and/or hardware components of a computer that must be added to a general purpose computer before the computer can receive and respond to requests from other computers and software in order to share data or hardware and software resources among the other computers and software, and computers having such components added thereto. As used in this application, “mobile computer,” “handheld computer,” “mobile computing device” or “handheld computing device” includes, but is not limited to, computers configured (e.g., having a form factor) to be held in a hand of a user during the normal course of use. As used in this application, “stationary computer” or “stationary computing device” includes, but is not limited to, computers configured (e.g., having a form factor) to be stationary relative to a user during the normal course of use. As used in this application, “mobile application” includes, but is not limited to, one or more separate and independent software components of a computer that must be added to a general purpose handheld computer before the handheld computer can run the mobile application.
As used in this application, “user data computer” and “user data program” include, but are not limited to, one or more separate and independent software and/or hardware components of a computer that must be added to a general purpose computer before the computer can receive, generate, store and transmit user data to other computers and software, and computers having such components added thereto.
As used in this application, “input/output module” includes, but is not limited to, one or more separate and independent software and/or hardware components of a computer that must be added to a general purpose computer before the computer can communicate with and facilitate the receipt and transfer of information, including but not limited to, user data, tax data and data graphs, from and to other computers for tax data acquisition. As used in this application, “memory module” includes, but is not limited to, one or more separate and independent software and/or hardware components of a computer that must be added to a general purpose computer before the computer can store information, including but not limited to, user data, tax data and data graphs in proper formats for, e.g., tax data acquisition.
As used in this application, “navigation module” includes, but is not limited to, one or more separate and independent software and/or hardware components of a computer that must be added to a general purpose computer before the computer can access a website and obtain user data therefrom. As used in this application, “data graph” includes, but is not limited to, one or more separate and independent software and/or hardware components of a computer that must be added to a general purpose computer before the computer can store and communicate information relating to websites that may include user data and/or tax data. As used in this application, “knowledge engine” includes, but is not limited to, one or more separate and independent software and/or hardware components of a computer that must be added to a general purpose computer before the computer can map data onto a data graph. As used in this application, “inference engine” includes, but is not limited to, one or more separate and independent software and/or hardware components of a computer that must be added to a general purpose computer before the computer can analyze a data model and suggest a system action based on the result of the analysis. As used in this application, “user interface” includes, but is not limited to, one or more separate and independent software and/or hardware components of a computer that must be added to a general purpose computer before the computer can communicate with a user.
As used in this application, “speech processor” includes, but is not limited to, one or more separate and independent software and/or hardware components of a computer that must be added to a general purpose computer before the computer can synthesize speech. As used in this application, “synthesized speech” includes, but is not limited to, artificially produced human speech.
As used in this application, “website” includes, but is not limited to, one or more operatively coupled webpages. As used in this application, “browser,” “web browser,” “browser program,” “web browser program,” “browser application” or “web browser application” includes, but is not limited to, one or more separate and independent software and/or hardware components of a computer that must be added to a general purpose computer before the computer can receive, display and transmit resources from/to the World Wide Web.
In the embodiment depicted in
The various computing devices 110, 112, 136 may include visual displays or screens 116 operatively coupled thereto. In the embodiment depicted in
While the user computing device 110 depicted in
While the tax return preparation system 108 and the server portion 106 of the automatic tax data acquisition system 102 running on the user computing device 110 depicted in
While the tax return preparation system 108 depicted in
While the automatic tax data acquisition system 102 and the tax return preparation system 108 depicted in
In one embodiment, the data graph 128 may be part of a tax return preparation system 108 running on a user computing device 110. In that embodiment, the data graph 128 forms the user computer portion 104 of the automatic tax data acquisition system 102. The other components of the automatic tax data acquisition system 102 (i.e., the navigation module 126, the knowledge engine 130, and the inference engine 132) form the server portion 106 thereof. In other embodiments, the components of the automatic tax data acquisition system 102 may be distributed between the user computer portion 104 and the server portion 106 thereof in any manner. In still other embodiments (see
The navigation module 126 is configured to access a website and obtain user data therefrom. As an example, the website may be for an online banking (credit, checking, savings, etc.) account of the taxpayer. The navigation module 126 may navigate the website, access the user's account (using the taxpayer's authentication information), and obtain user data from the taxpayer's account on the website. Example systems and methods for navigating websites are described in co-owned U.S. application Ser. No. 14/810,116, filed on Jul. 27, 2015; Ser. No. 14/871,366, filed on Sep. 30, 2015; and Ser. No. 14/925,633, filed on Oct. 28, 2015, the contents of which are incorporated by reference herein for all purposes as though set forth in full.
The data graph 128 is configured to store and communicate information relating to websites that may include user data and/or tax data. Continuing with the online banking account example from above, the data graph 128 may include navigation instructions for the website (e.g., navigation steps required to access an account holder's 1099-INT form for the current tax year, credits and debits, etc.) In another embodiment, the website may be for payroll account of the taxpayer. In that embodiment, the data graph 128 may include navigation instruction to access an account holder's W-2, pay history, information about changes in pay, information about medical leave, 401 K account, etc. The data graph 128 may include information for all websites that may include user data and/or tax data, including websites that are not relevant to the current taxpayer.
The knowledge engine 130 is configured to map data (e.g., user data and tax data) onto a data model. An exemplary data model into which the knowledge engine 130 can map data is the “completion graph” in the tax return preparation system described in co-owned U.S. patent application Ser. No. 14/448,886, filed on Jul. 31, 2014, the contents of which are incorporated by reference herein for all purposes as though set forth in full. The data model/completion graph represents a tax topic/tax legislation/tax rule such that mapping data into certain nodes of (i.e., “running”) the data model/completion graph will provide an answer for the taxpayer vis-a-vis the tax topic/tax legislation/tax rule. Some data models/completion graphs can be run by mapping data to more than one path of nodes. The nodes required to run a data model/completion graph varies for each graph. A tax return preparation system 108 can complete a taxpayer's tax return by running a finite set of data models/completion graphs. The knowledge engine 130 can also be configured to validate the mapping of data onto the data model. For instance, the knowledge engine 130 may determine whether the mapped data is the same format as the data model node into which it is mapped. Further, the knowledge engine 130 can be configured to determine whether the data model is complete after mapping the user data onto the data model.
Note that in
The completion graph 12 and the tax calculation graph 14 represent data structures that can be constructed in the form of a tree.
As one can imagine given the complexities and nuances of the tax code, many tax topics may contain completeness graphs 12 that have many nodes with a large number of pathways to completion. However, many branches or lines within the completion graph 12 can be ignored, for example, when certain questions internal to the completion graph 12 are answered that eliminate other nodes 20 and arcs 22 within the completion graph 12. The dependent logic expressed by the completion graph 12 allows one to minimize subsequent questions based on answers given to prior questions. This allows a minimum question set that can be generated that can be presented to a user as explained herein.
As explained herein, the directed graph or completion graph 12 that is illustrated in
Referring to
Thus, for example, referring to row 34a, when an answer to QA is “Y” and a path is completed through the completion graph 12 by answering Question C as “N” then answers to the other questions in Nodes B and D-F are “?” since they are not needed to be answered given that particular path.
After in initial question has been presented and rows are eliminated as a result of the selection, next, a collection of candidate questions from the remaining available rows 32a and 32b is determined. From this universe of candidate questions from the remaining rows, a candidate question is selected. In this case, the candidate questions are questions QC and QG in columns 34c, 34g, respectively. One of these questions is selected and the process repeats until either the goal 34h is reached or there is an empty candidate list.
Returning to
The user interface 134 is configured to facilitate communication between the automatic tax data acquisition system 102 and a user. The user interface 134 can be a graphical (e.g., textual) or audio (e.g., voice) interface.
Having described various aspects of automatic tax data acquisition systems 102 according to various embodiments, computer-implemented methods for obtaining tax data for a tax return preparation program 108 using the automatic tax data acquisition systems 102 will now be described. The methods also include analyzing and modifying a data model (e.g., completion graph), and suggesting system actions.
At optional step 302, the automatic tax data acquisition system 102 displays a user interface prompting a user to provide first user account information relating to a first user account. For instance, the first user account information may be authentication (e.g., user name and password) information for the first user account. The user interface may include information identifying common accounts likely to include tax data. Such accounts includes, but are not limited to, tax accounts, payroll accounts, bank accounts (e.g., savings and checking), credit card accounts, retirement accounts (e.g., 401K and IRA), loan accounts (e.g., home, auto and student), investment accounts, county records (e.g., property tax), and other government accounts (e.g., DMV for vehicle registration). The user interface may also include account providers for each of these account types.
At step 304, the automatic tax data acquisition system 102 (e.g., the navigation module 126) obtains first user account information. In some embodiments, the first user account information is obtained in response to the user interface displayed in step 302. The first user account information may be obtained from the user or from various data repositories to which the user provides access (e.g., by currently or previously authenticating the system 102 to the data repositories). An exemplary data repository is a financial management system such as MINT Financial Management Software, which is available from Intuit Inc. of Mountain View, California.
At step 306, the automatic tax data acquisition system 102 (e.g., the navigation module 126) accesses a first user account (e.g., an online banking account) using the first user account information (e.g., authentication information for the online banking account). The navigation module 126 may also use navigation information (e.g., a site map) from a data graph 128 to access the first user account.
At step 308, the automatic tax data acquisition system 102 (e.g., the navigation module 126) obtains first user data from the first user account. For instance, the system 102 may obtain a set of recent credits and debits from the online banking account. The navigation module 126 may also use navigation information (e.g., a site map) from a data graph 128 to obtain the first user data from the first user account.
At step 310, the automatic tax data acquisition system 102 (e.g., the inference engine 132) analyzes the first user data and identifies a second user account based on the results of that analysis. For instance, the inference engine 132 may identify regular payments from a payroll processor relating to a previously unidentified employer in the credits to the online banking account. From these payroll payments, the inference engine 132 may identify the payroll processor account with the previously unidentified employer as a second user account, which may be a tax data source.
At step 312, the automatic tax data acquisition system 102 requests second user account information (e.g., authentication information). The automatic tax data acquisition system 102 may use the user interface 134 to request the information from the user. Alternatively, the automatic tax data acquisition system 102 may request the information from a data repository to which the system 102 has been previously granted access.
At optional step 314, the automatic tax data acquisition system 102 (e.g., the navigation module 126) accesses the second user account (e.g., the payroll account) using the second user account information (e.g., authentication information for the payroll account). The navigation module 126 may also use navigation information (e.g., a site map) from a data graph 128 to access the second user account. Although not shown in
At optional step 316, the automatic tax data acquisition system 102 (e.g., the navigation module 126) obtains second user data from the second user account. For instance, the system 102 may obtain a W-2 form from the payroll account. The navigation module 126 may also use navigation information (e.g., a site map) from a data graph 128 to obtain the second user data from the second user account.
At optional step 318, the automatic tax data acquisition system 102 (e.g., the knowledge engine 130) maps the second user data onto a data model. The data model may be a tax topic completion graph as described above. The mapping may include extracting income data from the W-2 and importing the income data into an income related node of the completion graph.
At optional step 320, the automatic tax data acquisition system 102 (e.g., the knowledge engine 130) determines whether the data model is complete after mapping the second user data onto the data model. The knowledge engine 130 may run the completion graph after mapping to determine whether the completion graph is completed.
The method 300 depicted in steps 302 to 320 in
At optional step 402, the automatic tax data acquisition system 102 displays a user interface prompting a user to provide first user account information relating to a first user account. For instance, the first user account information may be authentication (e.g., user name and password) information for the first user account. The user interface may include information identifying common accounts likely to include tax data. Such accounts includes, but are not limited to, tax accounts, payroll accounts, bank accounts (e.g., savings and checking), credit card accounts, retirement accounts (e.g., 401K and IRA), loan accounts (e.g., home, auto and student), investment accounts, county records (e.g., property tax), and other government accounts (e.g., DMV for vehicle registration). The user interface may also include account providers for each of these account types.
At step 404, the automatic tax data acquisition system 102 (e.g., the navigation module 126) obtains first user account information. In some embodiments, the first user account information is obtained in response to the user interface displayed in step 402. The first user account information may be obtained from the user or from various data repositories to which the user provides access (e.g., by currently or previously authenticating the system 102 to the data repositories). An exemplary data repository is a financial management system such as MINT Financial Management Software, which is available from Intuit Inc. of Mountain View, California.
At step 406, the automatic tax data acquisition system 102 (e.g., the navigation module 126) accesses a first user account (e.g., an online banking account) using the first user account information (e.g., authentication information for the online banking account). The navigation module 126 may also use navigation information (e.g., a site map) from a data graph 128 to access the first user account.
At step 408, the automatic tax data acquisition system 102 (e.g., the navigation module 126) obtains first user data from the first user account. For instance, the system 102 may obtain a set of recent credits and debits from the online banking account. The navigation module 126 may also use navigation information (e.g., a site map) from a data graph 128 to obtain the first user data from the first user account.
At step 410, the automatic tax data acquisition system 102 (e.g., the inference engine 132) analyzes the first user data and identifies user data as potentially relevant to the user's tax burden based on the results of that analysis. For instance, the inference engine 132 may identify a payment to an accountant in the online banking account debits. This payment to an accountant may be relevant to the user's tax burden because it may qualify as an itemized deduction.
At step 412, the automatic tax data acquisition system 102 presents the user data (e.g., the payment to the accountant) to the user in order to determine the relevance of the user data. The automatic tax data acquisition system 102 may present the user data using the user interface 134.
At optional step 414, the automatic tax data acquisition system 102 presents a question along with the user data (e.g., the payment to the accountant) to the user in order to determine the relevance of the user data. The question may be based on the user data (e.g., “Was this payment to the accountant for income tax preparation?”). The automatic tax data acquisition system 102 may present the question using the user interface 134.
At optional step 416, the automatic tax data acquisition system 102 (e.g., the inference module 132) determines that the user data is relevant to the user's tax burden. For instance, the inference module 132 can determine that the payment to the accountant is relevant because it was for income tax preparation (in response to question presented in step 414).
At optional step 418, the automatic tax data acquisition system 102 (e.g., the knowledge engine 130) maps the user data onto a data model. The data model may be a tax topic completion graph as described above. The mapping may include importing the amount of the payment to the accountant into an itemized deduction related node of the completion graph.
At optional step 420, the automatic tax data acquisition system 102 (e.g., the knowledge engine 130) determines whether the data model is complete after mapping the second user data onto the data model. The knowledge engine 130 may run the completion graph after mapping to determine whether the completion graph is completed.
The method 400 depicted in steps 402 to 420 in
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Method embodiments or certain steps thereof, some of which may be loaded on certain system components, computers or servers, and others of which may be loaded and executed on other system components, computers or servers, may also be embodied in, or readable from, a non-transitory, tangible medium or computer-readable medium or carrier, e.g., one or more of the fixed and/or removable data storage data devices and/or data communications devices connected to a computer. Carriers may be, for example, magnetic storage medium, optical storage medium and magneto-optical storage medium. Examples of carriers include, but are not limited to, a floppy diskette, a memory stick or a flash drive, CD-R, CD-RW, CD-ROM, DVD-R, DVD-RW, or other carrier now known or later developed capable of storing data. The processor 220 performs steps or executes program instructions 212 within memory 210 and/or embodied on the carrier to implement method embodiments.
Although particular embodiments have been shown and described, it should be understood that the above discussion is not intended to limit the scope of these embodiments. While embodiments and variations of the many aspects of embodiments have been disclosed and described herein, such disclosure is provided for purposes of explanation and illustration only. Thus, various changes and modifications may be made without departing from the scope of the claims.
For example, while certain embodiments have been described with reference to simplified completion graph analysis, completion graphs can be substantially more complex such that more complicated analyses can be utilized therewith. Completion graph analysis is not available in known tax data acquisition systems.
The system and method embodiments described herein improve the functioning of a computer by improving its communication with a user (i.e., a more efficient user interface for tax data acquisition). The system and method embodiments described herein also transform account data into tax data and finally into a completed and filed tax return.
Where methods and steps described above indicate certain events occurring in certain order, those of ordinary skill in the art having the benefit of this disclosure would recognize that the ordering of certain steps may be modified and that such modifications are in accordance with the variations of the disclosed embodiments. Additionally, certain of the steps may be performed concurrently in a parallel process as well as performed sequentially. Thus, the methods shown in various flow diagrams are not intended to be limited to a particular sequential order, unless otherwise stated or required.
Accordingly, embodiments are intended to exemplify alternatives, modifications, and equivalents that may fall within the scope of the claims.
This application is a Continuation Application of U.S. application Ser. No. 15/164,777 filed May 25, 2016. The entirety of the above-listed application is incorporated herein by reference.
Number | Name | Date | Kind |
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5485544 | Nonaka | Jan 1996 | A |
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Number | Date | Country | |
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Parent | 15164777 | May 2016 | US |
Child | 16524825 | US |