METHODS AND APPARATUS TO CORRECT MISATTRIBUTIONS OF MEDIA IMPRESSIONS
An example method involves determining an impressions adjustment factor for a first demographic group based on first impressions reported by a client device to a first internet domain and second impressions reported by the client device to a second internet domain. The first and second impressions correspond to same media accessed on the client device. The example also involves determining a misattribution-corrected impressions count for the first demographic group based on the impressions adjustment factor and based on a second impressions count determined at the second internet domain for the first demographic group. The second impressions count has an error based on some of the second impressions being misattributed at the second internet domain to the first demographic group when the some of the second impressions correspond to a second demographic group.
This application claims priority to U.S. Provisional Patent Application Ser. No. 61/923,959 filed on Jan. 6, 2014, which is hereby incorporated herein by reference in its entirety.
FIELD OF THE DISCLOSUREThe present disclosure relates generally to monitoring media and, more particularly, to methods and apparatus to correct misattributions of media impressions.
BACKGROUNDTraditionally, audience measurement entities determine audience engagement levels for media based on registered panel members. That is, an audience measurement entity enrolls people who consent to being monitored into a panel. The audience measurement entity then monitors those panel members to determine media (e.g., television programs or radio programs, movies, DVDs, advertisements, streaming media, websites, etc.) exposed to those panel members. In this manner, the audience measurement entity can determine exposure metrics for different media based on the collected media measurement data.
Techniques for monitoring user access to Internet resources such as web pages, advertisements and/or other Internet-accessible media have evolved significantly over the years. Some known systems perform such monitoring primarily through server logs. In particular, entities serving media on the Internet can use known techniques to log the number of requests received for their media (e.g., content and/or advertisements) at their server.
Techniques for monitoring user access to Internet-accessible media such as web pages, advertisements, content and/or other media have evolved significantly over the years. At one point in the past, such monitoring was done primarily through server logs. In particular, entities serving media on the Internet would log the number of requests received for their media at their server. 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. Secondly, media is sometimes retrieved once, cached locally and then repeatedly viewed from the local cache without involving the server in the repeat viewings. Server logs cannot track these repeat views of cached media. Thus, server logs are susceptible to both over-counting and under-counting errors.
The inventions disclosed in Blumenau, U.S. Pat. No. 6,108,637, fundamentally changed the way Internet monitoring is performed and overcame the limitations of the server side log monitoring techniques described above. For example, Blumenau disclosed a technique wherein Internet media to be tracked is tagged with beacon instructions. In particular, monitoring instructions 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 beacon instructions are downloaded to the client. The beacon instructions 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 to be sent from the client that downloaded the media to a monitoring entity. Typically, the monitoring entity is an audience measurement entity (AME) that did not provide the media to the client and who is a trusted (e.g., neutral) 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 a panelist of the AME.
Audience measurement entities and/or other businesses often desire to link demographics to the monitoring information. To 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, they provide detailed information concerning their identity and demographics (e.g., gender, age, ethnicity, income, home location, occupation, etc.) to the AME. The audience measurement entity sets a cookie on the panelist computer that enables the audience measurement entity to identify the panelist whenever the panelist accesses tagged media and, thus, sends monitoring information to the audience measurement entity.
Since most of the clients providing monitoring information from the tagged media are not panelists and, thus, are unknown to the audience measurement entity, it is necessary 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 audience measurement entities remain small compared to the general population of users. Thus, a problem is presented as to how to increase panel sizes while ensuring the demographics data of the panel is accurate.
There are many database proprietors operating on the Internet. These database proprietors provide services to large numbers of subscribers. In exchange for the provision of the service, the subscribers register with the proprietor. As part of this registration, the subscribers provide detailed demographic information. Examples of such database proprietors include social network providers, email providers, etc. such as Facebook, Myspace, Twitter, Yahoo!, Google, etc. These database proprietors set cookies or other device/user identifiers on the client devices of their subscribers to enable the database proprietor to recognize the user when they visit their website.
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, for example, in the amazon.com domain is accessible to servers in the amazon.com domain, but not to servers outside that domain. Therefore, although an audience measurement entity might find it advantageous to access the cookies set by the database proprietors, they are unable to do so.
The inventions disclosed in Mainak et al., U.S. Pat. No. 8,370,489, which is incorporated by reference herein in its entirety, enable an audience measurement entity to leverage the existing databases of database proprietors to collect more extensive Internet usage and demographic data by extending the beaconing process to encompass partnered database proprietors and by using such partners as interim data collectors. The inventions disclosed in Mainak et al. accomplish this task by structuring the AME to respond to beacon requests from clients (who may not be a member of an audience member panel and, thus, may be unknown to the audience member entity) and redirect the client from the audience measurement entity to a database proprietor such as a social network site partnered with the audience member entity. The redirection initiates a communication session between the client accessing the tagged media and the database proprietor. The database proprietor (e.g., Facebook) can access any 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 subscriber of the database proprietor, the database proprietor logs an impression in association with the demographics data associated with the client and subsequently forwards logged impressions to the audience measurement company. In the event the client does not correspond to a subscriber of the database proprietor, the database proprietor may redirect the client to the audience measurement entity and/or another database proprietor. The audience measurement entity may respond to the redirection from the first database proprietor by redirecting the client to a second, different database proprietor that is partnered with the audience measurement entity. That second database proprietor may then attempt to identify the client as explained above. This process of redirecting the client from database proprietor to database proprietor can be performed any number of times until the client is identified and the media exposure logged, or until all database proprietor partners have been contacted without a successful identification of the client. The redirections all occur automatically so the user of the client is not involved in the various communication sessions and may not even know they are occurring.
Periodically or aperiodically the partnered database proprietors provide their logs and demographic information to the audience measurement entity which then compiles the collected data into statistical reports accurately identifying the demographics of persons accessing the tagged media. Because the identification of clients is done with reference to enormous databases of users far beyond the quantity of persons present in a conventional audience measurement panel, the data developed from this process is extremely accurate, reliable and detailed.
Significantly, because the audience measurement entity remains the first leg of the data collection process (e.g., receives the request generated by the beacon instructions from the client), the audience measurement entity is able to obscure the source of the media access being logged as well as the identity of the media itself from the database proprietors (thereby protecting the privacy of the media sources), without compromising the ability of the database proprietors to log impressions for their subscribers. Further, when cookies are used as device/user identifiers, the Internet security cookie protocols are complied with because the only servers that access a given cookie are associated with the Internet domain (e.g., Facebook.com) that set that cookie.
Examples disclosed in Mainak et al. (U.S. Pat. No. 8,370,489) can be used to determine any type of media impressions or exposures (e.g., content impressions, advertisement impressions, content exposure, and/or advertisement exposure) using demographic information, which is distributed across different databases (e.g., different website owners, service providers, etc.) on the Internet. Not only do such disclosed examples enable more accurate correlation of Internet advertisement exposure to demographics, but they also effectively extend panel sizes and compositions beyond persons participating in the panel of an audience measurement entity and/or a ratings entity to persons registered in other Internet databases such as the databases of social media sites such as Facebook, Twitter, Google, etc. Such extension effectively leverages the media tagging capabilities of the ratings entity and the use of databases of non-ratings entities such as social media and other websites to create an enormous, demographically accurate panel that results in accurate, reliable measurements of exposures to Internet media such as advertising and/or programming.
In illustrated examples disclosed herein, media exposure is measured in terms of online Gross Rating Points. A Gross Rating Point (GRP) is a unit of measurement of audience size that has traditionally been used in the television ratings context. It is used to measure exposure to one or more media (e.g., programs, advertisements, etc.) without regard to multiple exposures of the same media to individuals. In terms of television (TV) advertisements, one GRP is equal to 1% of TV households. While GRPs have traditionally been used as a measure of television viewership, examples disclosed herein may be used in connection with generating online GRPs for online media to provide a standardized metric that can be used across the Internet to accurately reflect online advertisement exposure. Such standardized online GRP measurements can provide greater certainty to advertisers that their online advertisement money is well spent. It can also facilitate cross-medium comparisons such as viewership of TV advertisements and online advertisements, exposure to radio advertisements and online media, etc. Because examples disclosed herein may be used to correct impressions that associate exposure measurements with corresponding demographics of users, the information processed using examples disclosed herein may also be used by advertisers to more accurately identify markets reached by their advertisements and/or to target particular markets with future advertisements.
Traditionally, audience measurement entities (also referred to herein as “ratings entities”) determine demographic reach for advertising and media programming based on registered panel members. That is, an audience measurement entity enrolls people that consent to being monitored into a panel. During enrollment, the audience measurement entity receives demographic information from the enrolling people so that subsequent correlations may be made between advertisement/media exposures to those panelists and different demographic markets. Unlike traditional techniques in which audience measurement entities rely solely on their own panel member data to collect demographics-based audience measurements, example methods, apparatus, and/or articles of manufacture disclosed herein enable an audience measurement entity to share demographic information with other entities that operate based on user registration models. As used herein, a user registration model is a model in which users subscribe to services of those entities by creating an account and providing demographic-related information about themselves. Sharing of demographic information associated with registered users of database proprietors enables an audience measurement entity 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 the AMA's demographics-based audience measurements. Such access also enables the audience measurement entity to monitor persons who would not otherwise have joined an audience measurement panel. Any entity having a network-accessible database identifying demographics of a set of individuals may cooperate with the audience measurement entity. Such entities may be referred to as “database proprietors” and include entities such as Facebook, Google, Yahoo!, MSN, Twitter, Apple iTunes, Experian, etc.
To increase the likelihood that measured viewership is accurately attributed to the correct demographics, examples disclosed herein use demographic information located in the audience measurement entity's records as well as demographic information located at one or more database proprietors that maintain records or profiles of users having accounts therewith. In this manner, examples disclosed herein may be used to supplement demographic information maintained by a ratings entity (e.g., an AME such as The Nielsen Company of Schaumburg, Ill., United States of America, that collects media exposure measurements and/or demographics) with demographic information from one or more different database proprietors.
The use of demographic information from disparate data sources (e.g., high-quality demographic information from the panels of an audience measurement company and/or registered user data of web service providers) results in improved reporting effectiveness of metrics for both online and offline advertising campaigns. Example techniques disclosed herein use online registration data to identify demographics of users and use server impression counts, tagging (also referred to herein as beaconing), and/or other techniques to track quantities of impressions attributable to those users. Online web service providers such as social networking sites (e.g., Facebook) and multi-service providers (e.g., Yahoo!, Google, Experian, etc.) (collectively and individually referred to herein as database proprietors) maintain detailed demographic information (e.g., age, gender, geographic location, race, income level, education level, religion, etc.) collected via user registration processes. As used herein, an impression is defined to be an event in which a home or individual is exposed to corresponding media (e.g., content and/or an advertisement). Thus, an impression represents a home or an individual having been exposed to media (e.g., an advertisement, content, a group of advertisements, and/or a collection of content). In Internet advertising, a quantity of impressions or impression count is the total number of times media (e.g., content, an advertisement or advertisement campaign) has been accessed by a web population (e.g., the number of times the media is accessed). As used herein, a demographic impression is defined to be an impression that is associated with a characteristic (e.g., a demographic characteristic) of the person exposed to the media.
Although such techniques for collecting media impressions are based on highly accurate demographic information, in some instances collected impressions may be misattributed to the wrong person and, thus, associated with incorrect demographic information. For example, in a household having multiple people that use the same client device (e.g., the same computer, tablet, smart internet appliance, etc.), collected impressions from that client device may be misattributed to a member of the household that is not the current user of the client device. That is, when an online user visits a website and is exposed to an advertisement on that site that has been tagged with beacon instructions, there is a redirect to a server of a database proprietor (e.g., Facebook, Yahoo, Google, etc.). The database proprietor then looks into a most recent cookie set by the database proprietor in the web browser of that client device. The database proprietor then attributes the impression to the user account corresponding to the cookie value. For example, the cookie value is one that was previously set in the client device by the database proprietor to correspond to a particular registered user account of the person that used the client device to most recently log into the website of that database proprietor. After collecting and attributing the impression to the user account associated with the retrieved cookie value, the database proprietor aggregates the total collected impressions and the size of the unique audience based on demographics associated with user accounts for all logged impressions. When this occurs over time and across many households, a number of collected impressions are misattributed to the wrong demographic information because some people use client devices after another person (e.g., another household member) has logged into a user account registered with the database proprietor without logging themselves (e.g., the current audience member) in. As such, a cookie corresponding to the previous person is still accessed from the client device while the subsequent user of the client device (e.g., a user that did not log into a corresponding user account registered with the database proprietor) accesses media on the client device which causes impressions to be misattributed to the previous person associated with the accessed cookie.
As used herein, a unique audience measure is based on audience members distinguishable from one another. That is, a particular audience member exposed to particular media is measured as a single unique audience member regardless of how many times that audience member is exposed to that particular media. If that particular audience member is exposed multiple times to the same media, the multiple exposures for the particular audience member to the same media is counted as only a single unique audience member. In this manner, impression performance for particular media is not disproportionately represented when a small subset of one or more audience members is exposed to the same media an excessively large number of times while a larger number of audience members is exposed fewer times or not at all to that same media. By tracking exposures to unique audience members, a unique audience measure may be used to determine a reach measure to identify how many unique audience members are reached by media. In some examples, increasing unique audience and, thus, reach, is useful for advertisers wishing to reach a larger audience base.
As used herein, total impressions refers to the total number of collected impressions for particular media regardless of whether multiple ones of those impressions are attributable to the same audience members. That is, multiple impressions accounted for in the total impressions may be attributable to a same audience member.
Misattribution is a measurement error that typically arises when impressions are collected from a same client device that is shared by multiple people in that a media impression caused by one person that is currently using the client device is incorrectly attributed (i.e., misattributed) to another person that previously used the same client device. Sharing of a client device can occur between two individuals who: (1) live in the same household, and/or (2) have access to the same client device. Misattribution occurs when, for a particular media exposure on a client device, a logged-in-user of a database proprietor service (e.g., Facebook) is not the same as the current user of the client device that is being exposed to the media. For example, if person A logs into the database proprietor's website in the morning on a client device, but person B uses the same client device in the afternoon without logging in (e.g., without user A logging out) and is exposed to media tagged with beacon instructions, the database proprietor attributes the impression to person A since he/she was the last person to log into the database proprietor's site from that client device, while actually it was person B who was using the client device when the media was presented.
Examples disclosed herein can be used to correct misattribution in collected impressions by applying a misattribution correction to impression data obtained from a database proprietor (e.g., Facebook, Yahoo, Google, etc.) after a profile correction (e.g., a Decision Tree (DT) model) has been applied to the impression data. Examples disclosed herein may be implemented by an audience measurement entity (e.g., any entity interested in measuring or tracking audience exposures to advertisements, content, and/or any other media) in cooperation with any number of database proprietors such as online web services providers. Such database proprietors/online web services providers may be 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), and/or any other web service(s) site that maintains user registration records.
Example methods and/or articles of manufacture comprising computer readable instructions disclosed herein may be used to receive, at a first internet domain, a first request from a client device, the first request indicative of access to media at the client device. In such examples, a response is sent from the first internet domain to the client device. In such examples, the response instructs the client device to send a second request to a second internet domain. In such examples, the second request is to be indicative of the access to the media at the client device. In such examples, an impressions adjustment factor is determined for a first demographic group based on first impressions reported by the client device to the first internet domain and second impressions reported by the client device to the second internet domain. In such example, the first and second impressions correspond to the same media accessed on the client device. In such examples, a misattribution-corrected impressions count is determined for the first demographic group based on the impressions adjustment factor and based on a second impressions count determined at the second internet domain for the first demographic group. In such examples, the second impressions count includes an error based on some of the second impressions being misattributed at the second internet domain to the first demographic group when the some of the second impressions correspond to a second demographic group.
In some examples, determining the misattribution-corrected impression count involves shifting an impression from the second impressions count corresponding to the first demographic group to a third impressions count corresponding to the second demographic group based on the impressions adjustment factor. In some examples, the first impressions are reported by the client device to an audience measurement entity at the first internet domain that does not provide the media to the client device, and a user of the client device is a panel member of the audience measurement entity. In some examples, the second impressions are reported by the client device to a social network service at the second internet domain to which a user of the client device is subscribed. In some examples, the impressions adjustment factor is to correct impression quantities having inaccuracies due to impressions incorrectly attributed to demographic data not corresponding to persons corresponding to the impressions.
In some examples, determining the impressions adjustment factor involves subtracting a first unique audience size determined by an audience measurement entity at the first internet domain based on the first impressions from a second unique audience size determined by a database proprietor at the second internet domain based on the second impressions to generate a difference. In such examples, the difference is divided by a total impressions count of the first impressions to determine the impressions adjustment factor.
In some examples, the error in the second impressions count is based on an entity at the second internet domain incorrectly identifying a user of the client device as belonging to the first demographic group when the user belongs to the second demographic group. In such examples, the misattribution-corrected impressions count comprises fewer impressions than the second impression count based on shifting an impression corresponding to the user from the second impressions count corresponding to the first demographic group to a third impressions count corresponding to the second demographic group based on the impressions adjustment factor.
In some examples, the misattribution-corrected impressions count is determined based on the impressions adjustment factor without communicating with individual online users about their online media access activities and without using survey responses from the online users to determine the error. In some examples, network communication bandwidth is conserved by not communicating with individual online users about their online media access activities and by not requesting survey responses from the online users to determine the error. In some examples, computer processing resources are conserved by not communicating with individual online users about their online media access activities and by not requesting survey responses from the online users to determine the error.
Example disclosed apparatus include an example impression collector to receive, at a first internet domain, a first request from a client device, the first request indicative of access to media at the client device. The example impression collector is also to send, from the first internet domain, a response to the client device, the response to instruct the client device to send a second request to a second internet domain, the second request to be indicative of the access to the media at the client device. Such example apparatus also include an impressions adjustment factor determiner to determine an impressions adjustment factor for a first demographic group based on first impressions reported by the client device to the first internet domain and second impressions reported by the client device to the second internet domain. In such examples, the first and second impressions correspond to the same media accessed on the client device. Such example apparatus also includes an impressions corrector to determine a misattribution-corrected impressions count for the first demographic group based on the impressions adjustment factor and based on a second impressions count determined at the second internet domain for the first demographic group. In such examples, the second impressions count includes an error based on some of the second impressions being misattributed at the second internet domain to the first demographic group when the some of the second impressions correspond to a second demographic group.
In some examples, the impressions corrector is to determine the misattribution-corrected impressions count by shifting an impression from the second impressions count corresponding to the first demographic group to a third impressions count corresponding to the second demographic group based on the impressions adjustment factor. In some examples, the first impressions are reported by the client device to an audience measurement entity at the first internet domain that does not provide the media to the client device. In some examples, a user of the client device is a panel member of the audience measurement entity. In some examples, the second impressions are reported by the client device to a social network service at the second internet domain to which a user of the client device is subscribed.
In some examples, the impressions adjustment factor determiner is to determine the impressions adjustment factor by subtracting a first unique audience size determined by an audience measurement entity at the first internet domain based on the first impressions from a second unique audience size determined by a database proprietor at the second internet domain based on the second impressions to generate a difference. In such examples, the difference is divided by a total impressions count of the first impressions.
In some examples, the impressions adjustment factor is to correct impression quantities having inaccuracies due to impressions incorrectly attributed to demographic data not corresponding to persons corresponding to the impressions. In some examples, the error in the second impressions count is based on an entity at the second internet domain incorrectly identifying a user of the client device as belonging to the first demographic group when the user belongs to the second demographic group. In some examples, the misattribution-corrected impressions count include fewer impressions than the second impression count based on shifting an impression corresponding to the user from the second impressions count corresponding to the first demographic group to a third impressions count corresponding to the second demographic group based on the impressions adjustment factor.
In some examples, the impressions corrector determines the misattribution-corrected impressions based on the impressions adjustment factor without communicating with individual online users about their online media access activities and without using survey responses from the online users to determine the error. In some examples, by determining the misattribution-corrected impressions using the impressions corrector, network communication bandwidth is conserved by not communicating with individual online users about their online media access activities and by not requesting survey responses from the online users to determine the error. In some examples, by determining the misattribution-corrected impressions using the impressions corrector, computer processing resources are conserved by not communicating with individual online users about their online media access activities and by not requesting survey responses from the online users to determine the error.
Example methods and/or articles of manufacture comprising computer readable instructions disclosed herein may be used to receive, at a first internet domain, a first request from a client device, the first request indicative of access to media at the client device. In such examples, a response is sent from the first internet domain to the client device. In such examples, the response is to instruct the client device to send a second request to a second internet domain. In such examples, the second request is to be indicative of the access to the media at the client device. In such examples, an audience adjustment factor is determined for a demographic group based on first impressions reported by the client device to the first internet domain and second impressions reported by the client device to the second internet domain. In such examples, the first and second impressions correspond to the same media accessed on the client device. In such examples, a misattribution-corrected unique audience size is determined for the demographic group based on the audience adjustment factor and based on a second unique audience size determined at the second internet domain for the demographic group. In such examples, the second unique audience size includes an error based on third impressions misattributed at the second internet domain to the demographic group when the third impressions correspond to another demographic group.
In some examples, determining the audience adjustment factor involves dividing a third unique audience size corresponding to the first impressions by a fourth unique audience size corresponding to the second impressions. In some examples, determining the misattribution-corrected unique audience size for the demographic group involves dividing the second unique audience size by the audience adjustment factor. In some examples, the first impressions are reported by the client device to an audience measurement entity at the first internet domain that does not provide the media to the client device, and a user of the client device is a panel member of the audience measurement entity. In some examples, the second impressions are reported by the client device to a social network service at the second internet domain to which a user of the client device is subscribed. In some examples, the audience adjustment factor is to correct unique audience size values having inaccuracies due to impressions incorrectly attributed to demographic data not corresponding to persons corresponding to the impressions.
In some examples, the error in the second unique audience size is based on an entity at the second internet domain incorrectly identifying a user of the client device as belonging to the demographic group when the user belongs to the another demographic group. In some such examples, the misattribution-corrected unique audience size is different than the second unique audience size based on dividing the second unique audience size by the audience adjustment factor.
In some examples, the misattribution-corrected unique audience size is determined based on the audience adjustment factor without communicating with individual online users about their online media access habits and without using survey responses from the online users to determine the error. In some examples, network communication bandwidth is conserved by not communicating with individual online users about their online media access habits and by not requesting survey responses from the online users to determine the error. In some examples, computer processing resources are conserved by not communicating with individual online users about their online media access habits and by not requesting survey responses from the online users to determine the error.
Example disclosed apparatus include an example impression collector to receive, at a first internet domain, a first request from a client device. In such examples, the first request is indicative of access to media at the client device. The example impression collector is also to send, from the first internet domain, a response to the client device. In such examples, the response is to instruct the client device to send a second request to a second internet domain. In such examples, the second request is to be indicative of the access to the media at the client device. Such example apparatus also include an audience adjustment factor determiner to determine an audience adjustment factor for a demographic group based on first impressions reported by the client device to the first internet domain and second impressions reported by the client device to the second internet domain. In such examples, the first and second impressions correspond to the same media accessed on the client device. Such example apparatus also include a unique audience corrector to determine a misattribution-corrected unique audience size for the demographic group based on the audience adjustment factor and based on a second unique audience size determined at the second internet domain for the demographic group. In such examples, the second unique audience size includes an error based on third impressions misattributed at the second internet domain to the demographic group when the third impressions correspond to another demographic group.
In some examples, the audience adjustment factor determiner is to determine the audience adjustment factor by dividing a third unique audience size corresponding to the first impressions by a fourth unique audience size corresponding to the second impressions. In some examples, the unique audience corrector is to determine the misattribution-corrected unique audience size for the demographic group by dividing the second unique audience size by the audience adjustment factor. In some examples, the first impressions are reported by the client device to an audience measurement entity at the first internet domain that does not provide the media to the client device, and a user of the client device is a panel member of the audience measurement entity. In some examples, the second impressions are reported by the client device to a social network service at the second internet domain to which a user of the client device is subscribed. In some examples, the audience adjustment factor is to correct unique audience size values having inaccuracies due to impressions incorrectly attributed to demographic data not corresponding to persons corresponding to the impressions.
In some examples, the error in the second unique audience size is based on an entity at the second internet domain incorrectly identifying a user of the client device as belonging to the demographic group when the user belongs to the another demographic group. In some such examples, the misattribution-corrected unique audience size comprising dividing the second unique audience size by the audience adjustment factor.
In some examples, the unique audience corrector is to determine the misattribution-corrected unique audience size based on the audience adjustment factor without communicating with individual online users about their online media access habits and without using survey responses from the online users to determine the error. In some examples, by determining the misattribution-corrected unique audience size, the unique audience corrector conserves network communication bandwidth by not communicating with individual online users about their online media access habits and by not requesting survey responses from the online users to determine the error. In some examples, by determining the misattribution-corrected unique audience size, the unique audience corrector conserves computer processing resources by not communicating with individual online users about their online media access habits and by not requesting survey responses from the online users to determine the error.
In the illustrated example, the client device 102 employs a web browser and/or applications (e.g., apps) to access media, some of which include instructions that cause the client device 102 to report media monitoring information to one or more of the impression collection entities 104. That is, when the client device 102 of the illustrated example accesses media, a web browser and/or application of the client device 102 executes instructions in the media to send a beacon request or impression request 108 to one or more of the impression collection entities 104 via, for example, the Internet 110. The beacon requests 108 of the illustrated example include information about accesses to media at the client device 102. Such beacon requests 108 allow monitoring entities, such as the impression collection entities 104, to collect impressions for different media accessed via the client device 102. In this manner, the impression collection entities 104 can generate large impression quantities for different media (e.g., different content and/or advertisement campaigns).
The impression collection entities 104 of the illustrated example include an example audience measurement entity (AME) 114 and an example database proprietor (DP) 116. In the illustrated example, the AME 114 does not provide the media to the client device 102 and is a trusted (e.g., neutral) third party (e.g., The Nielsen Company, LLC) for providing accurate media access statistics. In the illustrated example, the database proprietor 116 is one of many database proprietors that operates on the Internet to provide services to large numbers of subscribers. Such services may be email services, social networking services, news media services, cloud storage services, streaming music services, streaming video services, online retail shopping services, credit monitoring services, etc. Example database proprietors include social network sites (e.g., Facebook, Twitter, MySpace, etc.), multi-service sites (e.g., Yahoo!, Google, etc.), online retailer sites (e.g., Amazon.com, Buy.com, etc.), credit reporting services (e.g., Experian) and/or any other web service(s) site that maintains user registration records. In examples disclosed herein, the database proprietor 116 maintains user account records corresponding to users registered for Internet-based services provided by the database proprietors. That is, in exchange for the provision of services, subscribers register with the database proprietor 116. As part of this registration, the subscribers provide detailed demographic information to the database proprietor 116. Demographic information may include, for example, gender, age, ethnicity, income, home location, education level, occupation, etc. In the illustrated example, the database proprietor 116 sets a device/user identifier (e.g., an identifier described below in connection with
In the illustrated example, when the database proprietor 116 receives a beacon/impression request 108 from the client device 102, the database proprietor 116 requests the client device 102 to provide the device/user identifier that the database proprietor 116 had previously set for the client device 102. The database proprietor 116 uses the device/user identifier corresponding to the client device 102 to identify demographic information in its user account records corresponding to the subscriber of the client device 102. In this manner, the database proprietor 116 can generate demographic impressions by associating demographic information with an audience impression for the media accessed at the client device 102. As explained above, a demographic impression is an impression that is associated with a characteristic (e.g., a demographic characteristic) of the person exposed to the media.
In the illustrated example, the AME 114 establishes an AME panel of users who have agreed to provide their demographic information and to have their Internet browsing activities monitored. When an individual joins the AME panel, the person provides detailed information concerning the person's identity and demographics (e.g., gender, age, ethnicity, income, home location, occupation, etc.) to the AME 114. The AME 114 sets a device/user identifier (e.g., an identifier described below in connection with
In the illustrated example, when the AME 114 receives a beacon request 108 from the client device 102, the AME 114 requests the client device 102 to provide the AME 114 with the device/user identifier that the AME 114 previously set in the client device 102. The AME 114 uses the device/user identifier corresponding to the client device 102 to identify demographic information in its user AME panelist records corresponding to the panelist of the client device 102. In this manner, the AME 114 can generate demographic impressions by associating demographic information with an audience impression for the media accessed at the client device 102.
In the illustrated example, the client device 102 is used in an example household 120 in which household members 122 and 124 (identified as subscriber A 122 and subscriber B 124) are subscribers of an internet-based service offered by the database proprietor 116. In the illustrated example, subscriber A 122 and subscriber B 124 share the client device 102 to access the internet-based service of the database proprietor 116 and to access other media via the Internet 110. In the illustrated example, when the database proprietor 116 receives a beacon/impression request 108 for media accessed via the client device 102, the database proprietor 116 logs an impression for the media access as corresponding to the subscriber 122, 124 of the household 120 that most recently logged into the database proprietor 116. Misattributions of impressions logged by the database proprietor 116 are likely to occur in circumstances similar to the example household 120 of
In the illustrated example, the client device 102 accesses media 206 that is tagged with beacon instructions 208. The beacon instructions 208 cause the client device 102 to send a beacon/impression request 212 to an AME impressions collector 218 when the client device 102 accesses the media 206. For example, a web browser and/or app of the client device 102 executes the beacon instructions 208 in the media 206 which instruct the browser and/or app to generate and send the beacon/impression request 212. In the illustrated example, the client device 102 sends the beacon/impression request 212 to the AME impression collector 218 using an HTTP (hypertext transfer protocol) request addressed to the URL (uniform resource locator) of the AME impressions collector 218 at, for example, a first internet domain of the AME 114. The beacon/impression request 212 of the illustrated example includes a media identifier 213 (e.g., an identifier that can be used to identify content, an advertisement, and/or any other media) corresponding to the media 206. In some examples, the beacon/impression request 212 also includes a site identifier (e.g., a URL) of the website that served the media 206 to the client device 102 and/or a host website ID (e.g., www.acme.com) of the website that displays or presents the media 206. In the illustrated example, the beacon/impression request 212 includes a device/user identifier 214. In the illustrated example, the device/user identifier 214 that the client device 102 provides in the beacon impression request 212 is an AME ID because it corresponds to an identifier that the AME 114 uses to identify a panelist corresponding to the client device 102. In other examples, the client device 102 may not send the device/user identifier 214 until the client device 102 receives a request for the same from a server of the AME 114 (e.g., in response to, for example, the AME impressions collector 218 receiving the beacon/impression request 212).
In some examples, the device/user identifier 214 may be a device identifier (e.g., an international mobile equipment identity (IMEI), a mobile equipment identifier (MEID), a media access control (MAC) address, etc.), a web browser unique identifier (e.g., a cookie), a user identifier (e.g., a user name, a login ID, etc.), an Adobe Flash client identifier, identification information stored in an HTML5 datastore, and/or any other identifier that the AME 114 stores in association with demographic information about users of the client devices 102. When the AME 114 receives the device/user identifier 214, the AME 114 can obtain demographic information corresponding to a user of the client device 102 based on the device/user identifier 214 that the AME 114 receives from the client device 102. In some examples, the device/user identifier 214 may be encrypted (e.g., hashed) at the client device 102 so that only an intended final recipient of the device/user identifier 214 can decrypt the hashed identifier 214. For example, if the device/user identifier 214 is a cookie that is set in the client device 102 by the AME 114, the device/user identifier 214 can be hashed so that only the AME 114 can decrypt the device/user identifier 214. If the device/user identifier 214 is an IMEI number, the client device 102 can hash the device/user identifier 214 so that only a wireless carrier (e.g., the database proprietor 116) can decrypt the hashed identifier 214 to recover the IMEI for use in accessing demographic information corresponding to the user of the client device 102. By hashing the device/user identifier 214, an intermediate party (e.g., an intermediate server or entity on the Internet) receiving the beacon request cannot directly identify a user of the client device 102.
In response to receiving the beacon/impression request 212, the AME impressions collector 218 logs an impression for the media 206 by storing the media identifier 213 contained in the beacon/impression request 212. In the illustrated example of
In some examples, the beacon/impression request 212 may not include the device/user identifier 214 if, for example, the user of the client device 102 is not an AME panelist. In such examples, the AME impressions collector 218 logs impressions regardless of whether the client device 102 provides the device/user identifier 214 in the beacon/impression request 212 (or in response to a request for the identifier 214). When the client device 102 does not provide the device/user identifier 214, the AME impressions collector 218 will still benefit from logging an impression for the media 206 even though it will not have corresponding demographics. For example, the AME 114 may still use the logged impression to generate a total impressions count and/or a frequency of impressions (e.g., an impressions frequency) for the media 206. Additionally or alternatively, the AME 114 may obtain demographics information from the database proprietor 116 for the logged impression if the client device 102 corresponds to a subscriber of the database proprietor 116.
In the illustrated example of
In the illustrated example of
In some examples that use cookies as the device/user identifier 227, when a user deletes a database proprietor cookie from the client device 102, the database proprietor 116 sets the same cookie value in the client device 102 the next time the user logs into a service of the database proprietor 116. In such examples, the cookies used by the database proprietor 116 are registration-based cookies, which facilitate setting the same cookie value after a deletion of the cookie value has occurred on the client device 102. In this manner, the database proprietor 116 can collect impressions for the client device 102 based on the same cookie value over time to generate unique audience (UA) sizes while eliminating or substantially reducing the likelihood that a single unique person will be counted as two or more separate unique audience members.
Although only a single database proprietor 116 is shown in
In some examples, prior to sending the beacon response 222 to the client device 102, the AME impressions collector 218 replaces site IDs (e.g., URLs) of media provider(s) that served the media 206 with modified site IDs (e.g., substitute site IDs) which are discernible only by the AME 114 to identify the media provider(s). In some examples, the AME impressions collector 218 may also replace a host website ID (e.g., www.acme.com) with a modified host site ID (e.g., a substitute host site ID) which is discernible only by the AME 114 as corresponding to the host website via which the media 206 is presented. In some examples, the AME impressions collector 218 also replaces the media identifier 213 with a modified media identifier 213 corresponding to the media 206. In this way, the media provider of the media 206, the host website that presents the media 206, and/or the media identifier 213 are obscured from the database proprietor 116, but the database proprietor 116 can still log impressions based on the modified values which can later be deciphered by the AME 114 after the AME 114 receives logged impressions from the database proprietor 116. In some examples, the AME impressions collector 218 does not send site IDs, host site IDS, the media identifier 213 or modified versions thereof in the beacon response 222. In such examples, the client device 102 provides the original, non-modified versions of the media identifier 213, site IDs, host IDs, etc. to the database proprietor 116.
In the illustrated example, the AME impression collector 218 maintains a modified ID mapping table 228 that maps original site IDs with modified (or substitute) site IDs, original host site IDs with modified host site IDs, and/or maps modified media identifiers to the media identifiers such as the media identifier 213 to obfuscate or hide such information from database proprietors such as the database proprietor 116. Also in the illustrated example, the AME impressions collector 218 encrypts all of the information received in the beacon/impression request 212 and the modified information to prevent any intercepting parties from decoding the information. The AME impressions collector 218 of the illustrated example sends the encrypted information in the beacon response 222 to the client device 102 so that the client device 102 can send the encrypted information to the database proprietor 116 in the beacon/impression request 226. In the illustrated example, the AME impressions collector 218 uses an encryption that can be decrypted by the database proprietor 116 site specified in the HTTP “302 Found” re-direct message.
Periodically or aperiodically, the impression data collected by the database proprietor 116 is provided to a DP impressions collector 230 of the AME 114 as, for example, batch data. As discussed above, some impressions logged by the client device 102 to the database proprietor 116 are misattributed by the database proprietor 116 to a wrong subscriber and, thus, to incorrect demographic information. During a data collecting and merging process to combine demographic and impression data from the AME 114 and the database proprietor 116, demographics of impressions logged by the AME 114 for the client device 102 will not correspond to demographics of impressions logged by the database proprietor 116 because the database proprietor 116 has misattributed some impressions to the incorrect demographic information. Examples disclosed herein may be used to determine an impressions adjustment factor to correct/adjust impression-based data (e.g., total impressions and unique audience size) provided by the database proprietor 116.
Additional examples that may be used to implement the beacon instruction processes of
In the example of
The example audience adjustment factor determiner 232 of
The example unique audience corrector 236 of
Although the misattribution corrector 202 is shown in the illustrated example as being located in the AME 114, the misattribution corrector 202 may alternatively be located at any other location such as at the database proprietor 116 or at any other suitable location (e.g., location(s) separate from the AME 114 and the database proprietor 116). In addition, although the AME impressions collector 218, the modified ID map 228, and the DP impressions collector 230 are shown separate from the misattribution corrector 202, one or more of the AME impressions collector 218, the modified ID map 228, and/or the DP impressions collector 230 may be implemented in the misattribution corrector 202.
While an example manner of implementing the example misattribution corrector 202, the example impressions collector 218, the example modified ID map 228, the example DP impressions collector 230, the example audience adjustment factor determiner 232, the example impressions adjustment factor determiner 234, the example unique audience corrector 236, and the example impressions corrector 238 is illustrated in
Examples disclosed herein to correct impression-based data (e.g., total impressions and unique audience size) provided by the database proprietor 116 involve generating an adjustment factor based on impressions collected by the AME 116 and correctly attributed to demographic information for corresponding AME panelists. The misattribution corrector 202 of
Examples disclosed herein involve using impressions logged by the AME 114 in association with demographic data collected from AME panel members to calculate an audience adjustment factor using example Equation 1 below and an impression adjustment factor using example Equation 2 below. Audience adjustment factors determined using example Equation 1 can be used to correct unique audience size values having inaccuracies due to misattributions of impressions by database proprietors. Impression adjustment factors determined using example Equation 2 below can be used to correct impression quantities having inaccuracies due to misattributions of impressions by database proprietors.
In the illustrated example of
In example Equation 1 above, fi,j is the adjustment factor for a unique audience (UA) size of a particular demographic group (j) that accessed media (i), Fi,j is a database proprietor (DP) UA count of the number of AME panelists of the AME 114 that the database proprietor 116 observes (e.g., recognizes, identifies, logs impressions for, etc.) in the demographic group (j) as accessing the media (i), and Ti,j is an AME UA count of AME panelists that the AME 114 observes in the demographic group (j) as accessing the media (i).
In the illustrated example of
In example Equation 2 above, ki,j is the impressions adjustment factor for impressions logged for a particular demographic group (j) that accessed media (i), Ri,j is a DP UA count of the number of AME panelists of the AME 114 that the database proprietor 116 observes (e.g., recognizes, identifies, logs impressions for, etc.) in the demographic group (j) as accessing the media (i), Qi,j is an AME UA count of AME panelists that the AME 114 observes in the demographic group (j) as accessing the media (i), and Si is the total AME impressions of AME panelists (summed across all demographic groups) that accessed media (i).
In the illustrated example of
Unlike the known accuracy, or truth, of the AME impressions 302, there are no assurances that the DP impressions 304 are accurately associated with correct demographic information. That is, subscribers of the database proprietor 116 may not be incentivized to login to a website or service of the database proprietor 116 when the subscribers begin using a client device 102. As such, the database proprietor 116 is sometimes unable to accurately set and/or associate a DP ID (e.g., the device/user identifier 227 of
In the illustrated example of
The example DP UA sizes 406 have a misattribution-based error 410 for the F<50 demo group which results from the misattribution error 308 of
In the illustrated example, the audience adjustment factor determiner 232 of
In the illustrated example, the impressions adjustment factor determiner 234 of
As shown in the example table 500, the IA factor 502 corresponding to the F<50 demographic group having the misattribution-based error 508 is 11.11%, and the IA factor 502 corresponding to the M<50 demographic group having the misattribution-based error 510 is −11.11%. In the illustrated example, the IA factors 502 are 0.0% for the demographic groups not having misattribution-based errors. In the illustrated example, the impressions adjustment factor determiner 234 determines the misattribution-based error 508 of 11.11% for the F<50 demographic group based on Equation 2 above by subtracting the DP impressions 506 (Ri,j) of 3 for the F<50 demographic group shown in
The IA factors 502 of the illustrated example are percentages of the total AME impressions count 504 summed across all demographic groups. Thus, the IA factor 502 of 11.11% corresponding to the F<50 demographic group means that 11.11% of 9 total AME impressions (Si) (i.e., the sum of all of the AME impressions 504 logged across all of the demographic groups shown in
In the illustrated example of
In the illustrated example of
For example, to determine the misattribution-corrected impressions 604 corresponding to the F<50 demographic group, the example impressions corrector 238 of
To determine the misattribution-corrected impressions 604 for the M<50 demographic group, the example impressions corrector 238 of
An alternative technique to determine the misattribution-corrected unique audience sizes involves using impressions frequency values as described in connection with
As shown in
An example advantage of example misattribution adjustment techniques disclosed herein is that the total DP DT-corrected impressions count 612 (e.g., 710,000 impressions in
As mentioned above, the example process(es) of
The example flow diagram of
The example adjustment factors development phase 802 of
The example unique audience adjustment factor determiner 232 (
In the misattribution correction phase 804, the DP impressions collector 230 obtains the DP DT-corrected unique audience sizes 606 (
The misattribution corrector 202 determines whether to use impressions frequency to determine a misattribution-corrected unique audience size (block 824). For example, the misattribution corrector 202 may check a configuration setting in a file, a program, and/or a hardware setting indicating whether to determine a misattribution-corrected unique audience size based on an impressions frequency 706 (
At block 828, the example unique audience corrector 236 (
The misattribution corrector 202 then determines whether there is another demographic group for which misattribution-adjusted impression counts or misattribution-adjusted UA sizes are to be determined (block 830). If there is another demographic group, control returns to block 820. Otherwise, the example program of
The processor platform 900 of the illustrated example includes a processor 912. The processor 912 of the illustrated example is hardware. For example, the processor 912 can be implemented by one or more integrated circuits, logic circuits, microprocessors or controllers from any desired family or manufacturer.
In the illustrated example, the processor 912 implements the example misattribution corrector 202, the example AME impressions collector 218, the example DP impressions collector 230, the example audience adjustment factor determiner 232, the example impressions adjustment factor determiner 234, the example unique audience corrector 236, and/or the example impressions corrector 238 described above in connection with
The processor 912 of the illustrated example includes a local memory 913 (e.g., a cache). The processor 912 of the illustrated example is in communication with a main memory including a volatile memory 914 and a non-volatile memory 916 via a bus 918. The volatile memory 914 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 816 may be implemented by flash memory and/or any other desired type of memory device. Access to the main memory 914, 916 is controlled by a memory controller.
In the illustrated example, the local memory 913 stores the example modified ID map 228 described above in connection with
The processor platform 900 of the illustrated example also includes an interface circuit 920. The interface circuit 920 may be implemented by any type of interface standard, such as an Ethernet interface, a universal serial bus (USB), and/or a PCI express interface.
In the illustrated example, one or more input devices 922 are connected to the interface circuit 920. The input device(s) 922 permit(s) a user to enter data and commands into the processor 912. 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 924 are also connected to the interface circuit 920 of the illustrated example. The output devices 924 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, a cathode ray tube display (CRT), a touchscreen, a tactile output device, a light emitting diode (LED), a printer and/or speakers). The interface circuit 920 of the illustrated example, thus, typically includes a graphics driver card, a graphics driver chip or a graphics driver processor.
The interface circuit 920 of the illustrated example also includes a communication device such as a transmitter, a receiver, a transceiver, a modem and/or network interface card to facilitate exchange of data with external machines (e.g., computing devices of any kind) via a network 926 (e.g., an Ethernet connection, a digital subscriber line (DSL), a telephone line, coaxial cable, a cellular telephone system, etc.).
The processor platform 900 of the illustrated example also includes one or more mass storage devices 928 for storing software and/or data. Examples of such mass storage devices 928 include floppy disk drives, hard drive disks, compact disk drives, Blu-ray disk drives, RAID systems, and digital versatile disk (DVD) drives.
Coded instructions 932 include the machine readable instructions of
From the foregoing, it will be appreciate that methods, apparatus and articles of manufacture have been disclosed which enhance the operations of a computer to improve the accuracy of impression-based data such as unique audience and impression counts so that computers and processing systems therein can be relied upon to produce audience analysis information with higher accuracies. In some examples, computer operations can be made more efficient based on the above equations and techniques for determining IA factors, AA factors, misattribution-corrected unique audience sizes, and misattribution-corrected impression counts. That is, through the use of these processes, computers can operate more efficiently by relatively quickly determining parameters and applying those parameters through the above disclosed techniques to determine the misattribution-corrected data. For example, using example processes disclosed herein, a computer can more efficiently and effectively identify misattribution errors (e.g., the misattribution error 308 of FIG. 3) in development or test data logged by the AME 114 and the database proprietor 116 without using large amounts of network communication bandwidth (e.g., conserving network communication bandwidth) and without using large amounts of computer processing resources (e.g., conserving processing resources) to communicate with individual online users to request survey responses about their online media access habits and without needing to rely on such survey responses from such online users. Survey responses from online users can be inaccurate due to inabilities or unwillingness of users to recollect online media accesses. Survey responses can also be incomplete, which could require additional processor resources to identify and supplement incomplete survey responses. As such, examples disclosed herein more efficiently and effectively determine misattribution-corrected data. Such misattribution-corrected data is useful in subsequent processing for identifying exposure performances of different media so that media providers, advertisers, product manufacturers, and/or service providers can make more informed decisions on how to spend advertising dollars and/or media production and distribution dollars.
Furthermore, example methods, apparatus, and/or articles of manufacture disclosed herein identify and overcome inaccuracies in impressions and/or aggregate impression-based data provided by database proprietors. For example, example methods, apparatus, and/or articles of manufacture disclosed herein overcome the technical problem of counting impressions and determining unique audiences of media on media devices that are shared by multiple people. Example methods, apparatus, and/or articles of manufacture disclosed herein solve this problem without forcing such media devices to be used by only a single person and without forcing people to always login to their subscriber accounts of database proprietors. By not forcing logins into database proprietor accounts, examples disclosed herein do not force additional network communications to be employed, thus, reducing network traffic.
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.
Claims
1. A method, comprising:
- receiving, at a first internet domain, a first request from a client device, the first request indicative of access to media at the client device;
- sending, from the first internet domain, a response to the client device, the response to instruct the client device to send a second request to a second internet domain, the second request to be indicative of the access to the media at the client device;
- determining an impressions adjustment factor for a first demographic group based on first impressions reported by the client device to the first internet domain and second impressions reported by the client device to the second internet domain, the first and second impressions corresponding to the same media accessed on the client device; and
- determining a misattribution-corrected impressions count for the first demographic group based on the impressions adjustment factor and based on a second impressions count determined at the second internet domain for the first demographic group, the second impressions count having an error based on some of the second impressions being misattributed at the second internet domain to the first demographic group when the some of the second impressions correspond to a second demographic group.
2. A method as defined in claim 1, wherein determining the misattribution-corrected impression count comprises shifting an impression from the second impressions count corresponding to the first demographic group to a third impressions count corresponding to the second demographic group based on the impressions adjustment factor.
3. A method as defined in claim 1, wherein the first impressions are reported by the client device to an audience measurement entity at the first internet domain that does not provide the media to the client device, and a user of the client device is a panel member of the audience measurement entity.
4. A method as defined in claim 1, wherein the second impressions are reported by the client device to a social network service at the second internet domain to which a user of the client device is subscribed.
5. A method as defined in claim 1, wherein determining the impressions adjustment factor comprises:
- subtracting a first unique audience size determined by an audience measurement entity at the first internet domain based on the first impressions from a second unique audience size determined by a database proprietor at the second internet domain based on the second impressions to generate a difference; and
- dividing the difference by a total impressions count of the first impressions.
6. A method as defined in claim 1, wherein the impressions adjustment factor is to correct impression quantities having inaccuracies due to impressions incorrectly attributed to demographic data not corresponding to persons corresponding to the impressions.
7. A method as defined in claim 1, wherein the error in the second impressions count is based on an entity at the second internet domain incorrectly identifying a user of the client device as belonging to the first demographic group when the user belongs to the second demographic group, the misattribution-corrected impressions count comprising fewer impressions than the second impression count based on shifting an impression corresponding to the user from the second impressions count corresponding to the first demographic group to a third impressions count corresponding to the second demographic group based on the impressions adjustment factor.
8. A method as defined in claim 1, wherein the misattribution-corrected impressions count is determined based on the impressions adjustment factor without communicating with individual online users about their online media access activities and without using survey responses from the online users to determine the error.
9. A method as defined in claim 8, further comprising conserving network communication bandwidth by not communicating with individual online users about their online media access activities and by not requesting survey responses from the online users to determine the error.
10. A method as defined in claim 8, further comprising conserving computer processing resources by not communicating with individual online users about their online media access activities and by not requesting survey responses from the online users to determine the error.
11. An apparatus, comprising:
- an impression collector to: receive, at a first internet domain, a first request from a client device, the first request indicative of access to media at the client device; and send, from the first internet domain, a response to the client device, the response to instruct the client device to send a second request to a second internet domain, the second request to be indicative of the access to the media at the client device;
- an impressions adjustment factor determiner to determine an impressions adjustment factor for a first demographic group based on first impressions reported by the client device to the first internet domain and second impressions reported by the client device to the second internet domain, the first and second impressions corresponding to the same media accessed on the client device; and
- an impressions corrector to determine, via a processor, a misattribution-corrected impressions count for the first demographic group based on the impressions adjustment factor and based on a second impressions count determined at the second internet domain for the first demographic group, the second impressions count having an error based on some of the second impressions being misattributed at the second internet domain to the first demographic group when the some of the second impressions correspond to a second demographic group.
12. An apparatus as defined in claim 11, wherein the impressions corrector is to determine the misattribution-corrected impressions count by shifting an impression from the second impressions count corresponding to the first demographic group to a third impressions count corresponding to the second demographic group based on the impressions adjustment factor.
13. An apparatus as defined in claim 11, wherein the first impressions are reported by the client device to an audience measurement entity at the first internet domain that does not provide the media to the client device, and a user of the client device is a panel member of the audience measurement entity.
14. An apparatus as defined in claim 11, wherein the second impressions are reported by the client device to a social network service at the second internet domain to which a user of the client device is subscribed.
15. An apparatus as defined in claim 11, wherein the impressions adjustment factor determiner is to:
- determine the impressions adjustment factor by subtracting a first unique audience size determined by an audience measurement entity at the first internet domain based on the first impressions from a second unique audience size determined by a database proprietor at the second internet domain based on the second impressions to generate a difference; and
- divide the difference by a total impressions count of the first impressions.
16. An apparatus as defined in claim 11, wherein the impressions adjustment factor is to correct impression quantities having inaccuracies due to impressions incorrectly attributed to demographic data not corresponding to persons corresponding to the impressions.
17. An apparatus as defined in claim 11, wherein the error in the second impressions count is based on an entity at the second internet domain incorrectly identifying a user of the client device as belonging to the first demographic group when the user belongs to the second demographic group, the misattribution-corrected impressions count comprising fewer impressions than the second impression count based on shifting an impression corresponding to the user from the second impressions count corresponding to the first demographic group to a third impressions count corresponding to the second demographic group based on the impressions adjustment factor.
18. An apparatus as defined in claim 11, wherein the impressions corrector determines the misattribution-corrected impressions based on the impressions adjustment factor without communicating with individual online users about their online media access activities and without using survey responses from the online users to determine the error.
19. An apparatus as defined in claim 18, wherein the impressions corrector determining the misattribution-corrected impressions conserves network communication bandwidth by not communicating with individual online users about their online media access activities and by not requesting survey responses from the online users to determine the error.
20. An apparatus as defined in claim 18, wherein the impressions corrector determining the misattribution-corrected impressions conserves computer processing resources by not communicating with individual online users about their online media access activities and by not requesting survey responses from the online users to determine the error.
21-30. (canceled)
31. A method, comprising:
- receiving, at a first internet domain, a first request from a client device, the first request indicative of access to media at the client device;
- sending, from the first internet domain, a response to the client device, the response to instruct the client device to send a second request to a second internet domain, the second request to be indicative of the access to the media at the client device;
- determining an audience adjustment factor for a demographic group based on first impressions reported by the client device to the first internet domain and second impressions reported by the client device to the second internet domain, the first and second impressions corresponding to the same media accessed on the client device; and
- determining a misattribution-corrected unique audience size for the demographic group based on the audience adjustment factor and based on a second unique audience size determined at the second internet domain for the demographic group, the second unique audience size having an error based on third impressions misattributed at the second internet domain to the demographic group when the third impressions correspond to another demographic group.
32. A method as defined in claim 31, wherein determining the audience adjustment factor comprises dividing a third unique audience size corresponding to the first impressions by a fourth unique audience size corresponding to the second impressions.
33. A method as defined in claim 31, wherein determining the misattribution-corrected unique audience size for the demographic group comprises dividing the second unique audience size by the audience adjustment factor.
34. A method as defined in claim 31, wherein the first impressions are reported by the client device to an audience measurement entity at the first internet domain that does not provide the media to the client device, and a user of the client device is a panel member of the audience measurement entity.
35. A method as defined in claim 31, wherein the second impressions are reported by the client device to a social network service at the second internet domain to which a user of the client device is subscribed.
36. A method as defined in claim 31, wherein the audience adjustment factor is to correct unique audience size values having inaccuracies due to impressions incorrectly attributed to demographic data not corresponding to persons corresponding to the impressions.
37. A method as defined in claim 31, wherein the error in the second unique audience size is based on an entity at the second internet domain incorrectly identifying a user of the client device as belonging to the demographic group when the user belongs to the another demographic group, the misattribution-corrected unique audience size being different than the second unique audience size based on dividing the second unique audience size by the audience adjustment factor.
38. A method as defined in claim 31, wherein the misattribution-corrected unique audience size is determined based on the audience adjustment factor without communicating with individual online users about their online media access habits and without using survey responses from the online users to determine the error.
39. A method as defined in claim 38, further comprising conserving network communication bandwidth by not communicating with individual online users about their online media access habits and by not requesting survey responses from the online users to determine the error.
40. A method as defined in claim 38, further comprising conserving computer processing resources by not communicating with individual online users about their online media access habits and by not requesting survey responses from the online users to determine the error.
41-60. (canceled)
Type: Application
Filed: Oct 30, 2014
Publication Date: Jul 9, 2015
Inventors: Antonia Toupet (Sunnyvale, CA), Albert R. Perez (San Francisco, CA)
Application Number: 14/528,495