WO2018042179A1 - Procédé et système de fourniture de contenu - Google Patents
Procédé et système de fourniture de contenu Download PDFInfo
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- G—PHYSICS
- G06—COMPUTING OR CALCULATING; COUNTING
- G06Q—INFORMATION AND COMMUNICATION TECHNOLOGY [ICT] SPECIALLY ADAPTED FOR ADMINISTRATIVE, COMMERCIAL, FINANCIAL, MANAGERIAL OR SUPERVISORY PURPOSES; SYSTEMS OR METHODS SPECIALLY ADAPTED FOR ADMINISTRATIVE, COMMERCIAL, FINANCIAL, MANAGERIAL OR SUPERVISORY PURPOSES, NOT OTHERWISE PROVIDED FOR
- G06Q30/00—Commerce
- G06Q30/02—Marketing; Price estimation or determination; Fundraising
- G06Q30/0241—Advertisements
- G06Q30/0277—Online advertisement
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- G—PHYSICS
- G06—COMPUTING OR CALCULATING; COUNTING
- G06F—ELECTRIC DIGITAL DATA PROCESSING
- G06F16/00—Information retrieval; Database structures therefor; File system structures therefor
- G06F16/90—Details of database functions independent of the retrieved data types
- G06F16/95—Retrieval from the web
- G06F16/953—Querying, e.g. by the use of web search engines
- G06F16/9535—Search customisation based on user profiles and personalisation
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- G—PHYSICS
- G06—COMPUTING OR CALCULATING; COUNTING
- G06F—ELECTRIC DIGITAL DATA PROCESSING
- G06F16/00—Information retrieval; Database structures therefor; File system structures therefor
- G06F16/90—Details of database functions independent of the retrieved data types
- G06F16/95—Retrieval from the web
- G06F16/958—Organisation or management of web site content, e.g. publishing, maintaining pages or automatic linking
- G06F16/972—Access to data in other repository systems, e.g. legacy data or dynamic Web page generation
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- G—PHYSICS
- G06—COMPUTING OR CALCULATING; COUNTING
- G06Q—INFORMATION AND COMMUNICATION TECHNOLOGY [ICT] SPECIALLY ADAPTED FOR ADMINISTRATIVE, COMMERCIAL, FINANCIAL, MANAGERIAL OR SUPERVISORY PURPOSES; SYSTEMS OR METHODS SPECIALLY ADAPTED FOR ADMINISTRATIVE, COMMERCIAL, FINANCIAL, MANAGERIAL OR SUPERVISORY PURPOSES, NOT OTHERWISE PROVIDED FOR
- G06Q30/00—Commerce
- G06Q30/02—Marketing; Price estimation or determination; Fundraising
- G06Q30/0241—Advertisements
- G06Q30/0251—Targeted advertisements
- G06Q30/0269—Targeted advertisements based on user profile or attribute
Definitions
- the present invention relates to a system and method for modifying content of a web page, website or application.
- the invention relates to modifying content in response to a correlation between at least one stimulus that may influence an online interaction and user data.
- a user may be prompted to engage in digital activity substantially immediately or shortly after they are prompted by a stimulus. This type of digital interaction has been called a "micro-moment".
- a user's interest is peaked in this way for a short window of time in response to a stimulus, he or she often wants to quickly identify and access relevant information or content. This may include web pages, video content, audio content, news articles and advertising content.
- Understanding what stimulates or prompts a user to engage in digital activity may assist content providers to deliver relevant content without the need for the user to search extensively or navigate complex menus or web pages. It is also possible to deliver relevant content without the need for the user to search extensively or navigate complex menus or web pages. It is also possible to deliver relevant content without the need for the user to search extensively or navigate complex menus or web pages. It is also possible to deliver relevant content without the need for the user to search extensively or navigate complex menus or web pages. It is also
- Web pages may include slots or areas in which content can be modified, such that when the user visits the page, the most appropriate content for that user is displayed.
- One aspect of the invention provides a method of influencing web, social media or application content comprising:
- correlation data comprising a correlation between the signal data and the user data indicative of the influence of the at least one stimulus of digital engagement on the digital engagement of the user
- correlation may refer to a process or outcome of applying a statistical processor machine learning technique that implies a dependence or association between variables.
- the metric used to measure this relationship may be a correlation measure but may also include other measures such as mutual information probability metrics or learnt associations employing machine learning techniques.
- the method allows a client user or website owner to plan an approach before execution time and aligns the mechanics to business values, processes or objectives while still allowing dynamic selection of content at run time.
- the data feed comprises a media source selected from one or more of; a television channel, an on-demand video stream, electronic programme guide data, a radio channel, a social media site, a news feed, a weather feed, a sports feed.
- a media source selected from one or more of; a television channel, an on-demand video stream, electronic programme guide data, a radio channel, a social media site, a news feed, a weather feed, a sports feed.
- the signal data comprises television metadata.
- This may be closed caption data such as subtitles, image data or electronic programme guide data.
- the method comprises determining for a given content request by the user a unique identifier associated with the user.
- the user data comprises web activity data. This may be behavioural data.
- the user may be a non-authenticated user.
- the user data comprises user profile data. In certain embodiments, the user data comprises user signal data.
- User signal data may comprise signals from a user device, browser, IP address etc and may include time of interaction, mode, browser, location, IP address, type of device used.
- User data may comprise real time signals/data.
- the data feed comprises a real time data feed.
- the digital engagement comprises an online interaction selected from search, web page navigation, user journey, online content consumption, online purchase or download.
- the correlation data indicates a likelihood that the user is or has been consuming television or radio content at the time of the digital engagement.
- the likelihood may be expressed as a probability, which may be above a threshold level.
- the method may comprise identifying the television or radio content stimulus.
- the method may comprise assigning the user to one or more user segments based on the correlation.
- the method comprises modifying the web, social media or application content by selecting and serving content to the user according to the one or more user segments.
- the method comprises evaluating candidate content for presenting to the user based on relevance to the stimulus and/or the user data.
- the method may comprise evaluating candidate content, ranking or sorting content by assigning a relevance score and selecting content of relevance to the stimulus and/or user/segment.
- the method may be performed in response to a given content request by a user.
- Another aspect of the invention provides apparatus for influencing web, social media or application content comprising:
- a signal processor for receiving and processing signal data from a data feed, said signal data relating to at least one stimulus of digital engagement;
- a web monitor module for generating and storing user data
- a correlation processor for identifying and storing correlation data comprising a correlation between the signal data and the user data indicative of the influence of the at least one stimulus of digital engagement on the digital engagement of the user; and a content management module for modifying web, social media or application content in response to the correlation.
- Another aspect of the invention provides a method of determining the influence of at least one stimulus on digital engagement of a user comprising;
- the signal data relating to at least one stimulus of digital engagement; generating and storing user data;
- correlation data comprising a correlation between the signal data and the user data indicative of the influence of the at least one stimulus of digital engagement on the digital engagement of the user.
- the method comprises modifying a website or webpage in response to the correlation.
- Modifying the web page may include adding or removing content.
- Digital engagement may comprise an online interaction.
- the method comprises determining a unique identifier associated with the user and wherein user data comprises data specific to an individual user.
- the method may comprise identifying of a plurality of users or user group or segment.
- the method comprises assigning a user to one or more user segments in response to the correlation.
- the method comprises modifying a website or web page according to the one or more user segments.
- the user data comprises user web activity data.
- the user web activity data comprises search terms or keywords.
- the method comprises the data feed comprises a media source selected from; a television channel, an on-demand video stream, electronic programme guide data, a radio channel, a social media site, a news feed, a weather feed, a sports feed.
- a media source selected from; a television channel, an on-demand video stream, electronic programme guide data, a radio channel, a social media site, a news feed, a weather feed, a sports feed.
- the online interaction may comprise search, web page navigation, user journey, online content consumption, online purchase and/or download.
- the user data may be updated in substantially real time or near real time.
- users are dynamically segmented.
- the data feed may comprise television metadata.
- the user data comprises time of online interaction.
- the correlation data comprises a correlation between stimulus status and the online interaction of the user during a predetermined period of time.
- Stimulus status may comprise a broadcast of text, image or audio, a level or score, a change in a level or score, an on/off or yes/no value.
- the user data may comprise user profile data.
- the correlation data stores a correlation between online search terms entered by the user and terms associated with or relating to the stimulus.
- the method comprises determining based on the correlation data a probability that the at least one stimulus has influenced the online interaction of the user.
- the at least one stimulus comprises television and the method comprises determining based on the correlation data a probability that the user is watching television.
- the correlation data comprises a correlation between input data comprising television metadata and user data comprising one or more of search terms, location data, device data and/or user profile data.
- the method comprises generating further segmentation and assigning a user to a segment based on the probability that the user is watching television. This provides the advantage as content can be targeted to a user who is "second screening" without any network connection or other communication between television and user device.
- the method comprises utilising a machine learning algorithm to influence modification of the website or web page on a subsequent visit by the same user or other users in the same segment or segments.
- the method comprises determining based on the correlation data a probability that the at least one stimulus has influenced the online interaction of a plurality of users of the same segment or segments.
- the method comprises dynamically assigning a plurality of simultaneous online users to one or more segments.
- the method may be for use by an advertising management system.
- Yet another aspect of the invention provides a method of segmenting users of a website, comprising
- User data may comprise user activity data.
- the method may comprise dynamically segmenting users in substantially real time or near real time.
- Yet another aspect of the invention provides a method of providing personalised content, comprising
- Another aspect of the invention provides a method for providing digital content comprising:
- the selection of the one or more targeting criteria comprising an indication that the online interaction of an online user is influenced by a certain stimulus
- step of evaluating candidate content comprises determining whether the online interaction of the online user has been influenced by the stimulus
- the determination that the online user has been influenced by the stimulus comprises identifying a correlation between online user data and stimulus signal data.
- evaluating candidate content comprises receiving a request for content from a user and evaluating whether the user is watching television or has been watching television.
- the method comprises identifying the television content and determining the relevance of candidate content to the television content and/or user.
- Another aspect of the invention provides a computer implemented method of serving digital content to a user comprising
- One aspect of the invention comprises computer implemented method of serving digital content to a user comprising
- the input signal data comprises disparate data and processing of the input signal data comprises combining the disparate data to output normalised signal data.
- the user interest attributes and/or user interest metric comprise dynamically changeable time based values.
- the user interest metric may be calculated by assigning an interest value to each of a plurality of predetermined interest attributes.
- the method comprises repeatedly calculating the user interest metric a plurality of times during a user session.
- the user interest metric may be re-calculated with each predetermined user engagement.
- the user interest attributes may be predetermined.
- user data comprises online behavioural data.
- the user may be an anonymous user and user data may comprise behavioural data from the anonymous user.
- determining a correlation between the input signal data and the one or more content item attributes and/or user interest attributes comprises determining the correlation based on the user interest metric and media signal substantially at the time of the media signal being broadcast.
- determining a correlation comprises calculating a correlation metric.
- the correlation metric may be indicative of an association between one or more attributes of media signal data and one or more attributes of content item attributes.
- the correlation metric may be indicative of an association between one or more attributes of user data and one or more attributes of content item attributes.
- the correlation metric may be indicative of an association between one or more attributes of media signal data and one or more attributes of user data.
- the method comprises algorithmically combining user interest correlation metrics and signal metadata correlation metrics to determine and execute content selection.
- the system may deliver one or more content items to the user, wherein selection of the content items is based on the user request and the correlation data.
- the method comprises dynamically generating a set of digital content items for output to a user device based on the correlation data.
- the method comprises filtering by assigned user segment candidate content items for output to a user.
- the one or more input signals comprises a broadcast media signal and the method comprises calculating a probability that the user is influenced by the broadcast.
- content is selected for output to a user device based on the correlation data or combination of correlation data and user interest metric when the calculated probability is above a threshold value.
- User interest attributes may include price point (or range), brand affinity, style, preferences, colour, clothing size, basket additions, repeat product views, checkout abandons.
- One or more output content items may be delivered to a user as a recommendation or set of recommended items.
- the method comprises inserting the selected content into a content slot on a web page and delivering the web page with the selected content to a user device associated with a user.
- the media signal data comprises a digital signal representing an offline stimulus of digital interaction. There may be no substantially direct communication or network connection between signal source and the online user.
- Figure 1 A schematically illustrates a system for influencing web, social media or application content.
- Figure IB schematically illustrates a system for influencing web, social media or application content.
- Figure 2 schematically illustrates a system for influencing web, social media or application content.
- Figure 3 is a schematic flow diagram which illustrates how user data and signal data are correlated to influence content.
- Figures 4A, 4B and 4C show schematic flow diagrams which illustrates how user data and signal data are correlated to influence content.
- Figure 5 schematically illustrates how content on a web page or application may be modified.
- Figure 6 schematically illustrates a system for influencing web, social media or application content.
- Figure 1A is a schematic illustration of an example environment 100 in which modified content is output to a user in response to determining an association metric between attributes of content, user interest and one or more time based digital signals substantially at the time the content is requested by a user device 101.
- the invention can be deployed in various ways.
- Personalised content may be provided to remote users of computing devices via a network of any kind and such content may be provided as a recommender service, for example to provide product recommendations to users in online retail environments and/or in selection of downloadable media content or applications.
- a database of content items may be local or remote from the user, stored at one location or distributed across multiple servers.
- a network 102 is configured to couple user device 101, publisher 103, server or "ad server” 104 and a content generation system 105, allowing them to
- the network 102 may include any type of network, for example, the Internet, wi-fi network, local area network (LAN), wide area network (WAN) or wireless telephone network. It will be understood that although in the illustrative example shown in Figure la, a single user device is shown but in fact the system 100 may include many thousands of user devices 101, publishers 103 and ad servers 104.
- User devices 101 may include desktop computers, laptop computers, tablets, mobile telephones personal digital assistants or any other devices capable of receiving content via the network 102 and presenting it to a user.
- a user device 101 will comprise an application eg a web browser, providing a user interface through which web pages are displayed to the user and through which the user may interact with the web pages.
- Publishers 103 may be website owners, retailers, and/or online platforms such as Facebook, Twitter, Instagram, Google etc.
- the content generation system 105 may be part of an ad server or publisher.
- the content generation engine 105 dynamically selects and assembles content items 106 to be presented to the user on the user device 101 in response to the request.
- the content items may be retrieved from a server 104 (such as an advertisement server) or directly from a publisher 103.
- Content items 106 are tagged according to certain attributes and categorised in groups - each of the digital content items in a group having similar or related attributes.
- the content items may be categorised using key-value (or attribute-value) pairs and retrieved from a data store or content library by the content generation engine 105, based on key -value pair attribute groupings and/or weighting algorithms.
- the content items 106 may comprise files, documents, text, images, audio, video elements, graphics, search results, web pages, webpage listings, discussion threads, hyperlinks, numerical values, embedded content, advertisements, ad extensions, banners etc or any combination thereof.
- the content generation engine 105 has an input for receiving time based digital signals from an external source or signal provider 108.
- Time based digital signals received from signal source 108 may include media source data associated with, for example, a television channel, an on-demand video stream, a radio channel, a social media site, a news feed, a weather feed, electronic programme guide (EPG) data, sports data.
- EPG electronic programme guide
- the time based signals may include data relating to weather, news, events, sports data, financial market data, health related data eg air quality, pollen count or pollution data, product price data, product inventory data, search trends data eg Google Trends, social media data eg Twitter, Facebook, social media trends data, electronic customer relationship management (eCRM) events eg internal or competitor data, promotions data, transport related data eg traffic reports, blog data eg competitor blog information, technical events eg service outage, calendar data, calendar events, social media events, sentiment data, content events eg sports, broadcast media metadata, electronic programme guide (EPG data) and/or television subtitle data. These may be received as RSS or Atom feeds.
- Signals received by the content generation engine 105 represent variable values which may be text based strings representing time based events, which may therefore change over time. If an attribute of signal data representing a particular condition or event is received by a signal processor, this may trigger a processing action of the optimisation engine, for example to affect the selection logic output of a content retrieval module, which is triggered to perform one or more processing actions, such as selection and assembly of particular content items for transmission to a user device. Such processing actions may be subject to time restrictions or time delay - for example, certain content items may be selected to be transmitted within a specified time period.
- Content items are categorised according to content attributes - and optionally also according to predetermined user request attributes, into groups according to a defined ontology.
- a user request attribute may include, for example a search keyword or combination of keywords input by a user, ad clicked, or the type of device used.
- content items may be further categorised and grouped according to user specific information such as user profile information, for example, based on a user's interests, geo-location, preferences, interests, demographic, online behaviour, social groups, transactions, purchase history and the like.
- Figure IB illustrates in further detail how the content generation system 105 receives data feed signals and influences Internet search functions, web pages, social media sites or applications (which might be mobile applications (or “apps") running on portable electronic devices such as mobile phones, or software applications running on personal computers for example) based on those signals.
- the content generation system 105 comprises a client front end la, via which a client may enter rules which govern what happens when one or more signals are detected in one or more data feeds 2a, 2b, 2c, 2d received at an ingestion processor 3.
- the rules are stored in a database 4 and may relate to how provision content, searches, web pages or other media streams should be influenced or modified if a particular signal, or combination of signals is detected.
- the rules may relate to targeting certain content to a particular segment of users/consumers, such as a segment of users for which correlation data indicates a probability or confidence score above a certain threshold that one or more of the signals represents a stimulus that has influenced the behaviour of the user.
- Clients may be website owners or other content providers and the database 4 may store large numbers of rules associated with various different clients (and/or their associated web sites), and with various different rules for various signals and combinations of data feed signals. It will therefore be understood that the occurrence of a particular signal in a data feed may invoke a number of rules in relation to different clients and their websites.
- Examples of data feed signals 2a, 2b, 2c, 2d include weather, news, event data, sports data, financial market data, health related data eg air quality, pollen count or pollution data, product price data, product inventory data, search trends data eg Google Trends, social media data eg Twitter, Facebook, social media trends data, ECRM events eg internal or competitor data, promotions data, transport related data eg traffic reports, blog data eg competitor blog information, technical events eg service outage, calendar events, social media events, sentiment data, content events eg sports, TV, and the like, TV metadata such as subtitles and/or images.
- One or more of these may represent stimuli that influence or prompt digital engagement of an online user.
- Such input data may be referred to as "features”.
- Figure IB shows four data feed signals 2a, 2b, 2c, 2d but it will be understood that the system of the invention may comprise a single data feed or signal type, or it may comprise a plurality of different data feeds or signal types. They may be received as RSS (rich site summary) or Atom type feeds.
- Certain types of data feed signals 2 such as news or weather feeds, or social media feeds, are rich in text content, making it relatively straightforward to identify the occurrence of particular words or phrases within those data feeds.
- data feed signals such as news or weather feeds, or social media feeds
- the media is less text based, making it more difficult to obtain text-based descriptions of what is going on in the content.
- numerical data may require non text based processing.
- data feeds may comprise a client's own internal data, such as promotions or inventory data, and/or may be provided by a third party data supplier.
- the system is configured such that the signal data is processed by an ingestion processor 3 (signal processor) to determine when certain conditions are met and these conditions may be linked by predefined association rules to directly associate the signal value/ condition with particular content and/or user attributes.
- an ingestion processor 3 signal processor
- the ingestion processor 3 receives and processes data feed signals 2a, 2b, 2c, 2d and an optimisation engine 5 effects modifications to a client website 6 in response to the data feed input signals and the rules in database 4.
- the ingestion processor 3 comprises a matching engine that queries certain keyword or phrase matches and sends a match alert object to a match processor.
- the match processor processes the match object to determine which content items or groups of content items are affected by the match object.
- the system 105 determines which actions (if any) are output in relation to the rules in database 4.
- the system may determine a probability value that a user is influenced by a stimulus such as TV and if the value is below a threshold value no further processing action is output.
- a web monitor 7 monitors traffic and user interaction with the client's web site 2, and records this with respect to time.
- the web monitor may use cookies, Javascript tags or the like and some data may be stored as cookie data.
- User data for each unique user is collected and stored in database 8 and is updated as the user navigates the website 6. The updates may happen in real-time, or periodical ly.
- User profile information may comprise information about an individual user's age, gender, demographic, geo-location, preferences, time of day. The information may also comprise historic data relating to the user's previous interactions with the client website and real time activity data collected and processed at or around the time the user visits the website 6.
- User profile data may comprise user interest profile data, based on the user's browsing behaviour during a browsing session.
- User profile data may include data originating from content profiles for the pages that, the user consumes. For example, if a user tends to read pages about music, that will be reflected in that user's profile.
- the data may also comprise search queries submitted by the user. Additionally, it may include data inferred from requests made by the user. For example, location and device usage may be inferred from the IP address and User-Agent string.
- the user profile data may include externally supplied data, which may be non-public data that a client has col lected. Certain elements of user profile data may be used for different elements of personalisation or
- User profiles may contain group names that are associated with the individual user, such as the city where the user is located, including the real time location of the user, geographical co-ordinates, the user's workplace (which may be inferred by the owner of the user's ⁇ block), the type of device eg mobile telephone, tablet or desktop, the brand of the device, the browser, operating system, search engine and the like. Further information in user profile may include search queries entered by the user on sites within a network or outside the network ie referrer sites, advertisements clicked and browsing history, As a user interacts with the website 6, and consumes pages, the user profile is updated by factoring in a weighting for each user interaction, for example giving a higher weighting to recently consumed items or those having greater time spent etc. The user profile is updated substantially immediately with each user action, but some sub-sets of user profile data may be updated periodically rather than dynamically, such as the long term user interests, based on total browsing history.
- segmentation and/or interest metric determination is a dynamic process, such that groupings may change in real time or near real time based on real time user interactions with the website and/or with correlation of user information with real time or near real time data feed signals.
- Users may be grouped in segments using user profile data such as geo- location, age, demographic, survey preferences etc and alternatively, or in addition, by historic web activity data such as average time spent on website, page views, purchase history, user (customer) journey, responsiveness to special offers, previous search history, social media interactions and preferences, articles of interest etc.
- a user may be assigned to a segment in real time or near real time while interacting with the website during a user session, based on real time or near real time data and/or based on a correlation between real time user activity data and historic and/or user profile data.
- the optimisation engine 5 may effect modification of a web page, or a section thereof, to display a free delivery offer on running clothing.
- the user journey on the site may also indicate what the customer is interested in.
- the real time data may also comprise signal data from one or more of the data feeds 2a-2d. If the data feed includes weather data and the signal indicates that the temperature is high in a location associated with the user profile, the optimisation engine 5 may effect modification of the web page or section to prioritise content promoting warm weather running clothing, for example running shorts and vests.
- the web site monitor 7 may in fact monitor traffic to a large number of client user web sites, and store traffic information in association with an identification of the web site and/or client user.
- FIG. 2 illustrates in further detail the system and optimisation engine 5 and is described using an example of the system utilising a media stream such as a television data feed.
- the ingestion processor 3 receives and processes TV signal data 20a, 20b, 20c, 20d. These could be for example, data from any number of TV channels, or multiple signals associated with a particular TV channel or TV programme.
- the signal or signals may comprise TV metadata.
- the optimisation engine 5 comprises a correlation processor 9 which correlates data feed signal data received at the ingestion processor 3 with user data from database 8. Based on a correlation, users may be allocated to segments or subgroups via a segmentation module 10. Alternatively, or in addition, the correlation processor correlates data feed signal attributes with content attributes and based on the correlation, certain content may be prioritised for delivery to a user.
- a strategy controller 11 determines which content is most relevant to a particular segment or segments, user or users, and/or to the signal data based on the data available.
- the client website 6 or webpage is modified accordingly.
- Web page modification may include (but is not limited to) personalised recommendations, modification of text, images or other content on a whole or any part of a webpage, re-ordering display of products, presentation of an advertisement or offer.
- the web monitor 7 monitors user and/or segment activity and interaction with the website. This provides data on efficacy of the personalised or optimised content, for example, as compared with user/segment engagement with non-personalised content. This is fed back into user data and utilised in the system for future optimisation and personalisation.
- TV signal data 20a comprises subtitle text or image data from a TV channel, which indicates a mention of a particular word, group of words or phrase in TV content, such as the name of a particular celebrity being interviewed on a TV show about cars.
- a user visits the client website 6.
- the system 1 algorithmically calculates a probability that the user is currently - or has been -watching the TV show. If the probability is above a defined threshold, the optimisation engine 5 effects modification of the website 6 or webpage thereof accordingly.
- the modification may be in any form desired by the client.
- the optimisation engine may select and deliver content to a webpage, such that it is modified to display an image related to the TV show or actors in the show. Similarly, a flash sale, chat box or time limited offer related to the TV show could be displayed.
- the probability that the user is watching TV (and/or a specific show) is also be useful in determining commercial intent, as it could be inferred that a conversion to eg purchase a product may be more likely when user is watching TV at home, compared to, for example, when the user is "on the go”.
- the signal data feed 20a, 20b, 20c, 20d may comprise EPG (electronic programme guide) signal data and closed caption (subtitle) data.
- EPG electronic programme guide
- subtitle closed caption
- a user arrives at a client website 6 and the website monitor 7 collects user data indicating the particular user has used search terms, is referred from a particular URL, or has clicked on an advert for "five star hotels in Beauty" within a few minutes of the closed caption (subtitle) signal mention of related content.
- the system determines a correlation between the user activity data including time of visit and search terms used or advert clicked, with signal data including time of TV broadcast and EPG content information and/or subtitle information.
- the search terms / keywords entered by the user include the same or similar words as the subtitle text
- the keywords may be different and event contextually unrelated to the signal text- but nevertheless associated with the signal content in some way by the system of the invention based on historical associations and/or machine learning.
- Additional user data may also be correlated to provide a more accurate determination of the probability that the individual user is watching the TV
- user profile data may establish that the user is grouped within the main demographic of viewers of the particular TV show and that the user has an interest in travel. Both factors would increase a probability score that the user is a viewer of the show.
- stored correlation data may indicate that the user has previously visited the website or other websites during broadcast times of the same TV show. This would significantly increase the probability that the user is viewing the show.
- the user is assigned to a segment or group of users who are likely to be viewers of the particular programme and/or user profile data is updated accordingly.
- the user may be assigned to a segment of users motivated to search when watching TV.
- Webpage content is modified accordingly to personalise the user interaction with the website depending on user segmentation.
- the web monitor may further collect data on the user's interaction and compare with historic data to test a hypothesis on an individual user or user segment's engagement with personalised content.
- the user is then further assigned to either of a group of users likely to respond positively to similar webpage modifications, images, advertisements etc or a group of users unlikely to respond.
- the information is fed back into the system and the user data is refined.
- a machine learning algorithm is utilised to further refine the webpage modifications and selection of content and/or rules. Patterns in individual user behaviour or segment behaviour may be established and used to further refine the system and/or make inferences and content modifications in relation to other users having similar profiles.
- aggregated user data or traffic profile for a particular group or segment may reveal an elevated number of users from a particular group arriving at a website during a particular time window.
- the user data including time of visit, demographic, interests profile etc is then correlated with signal data from, for example media streams such as TV or social networks to determine the probability that those users are being motivated to search based on the media content.
- user data may indicate that an elevated number of users of the same segment arrive at a website within a specific time period.
- the system may correlate this data with signal data to determine the most likely event (such as a broadcast media event) motivating that group to visit the site.
- Those users may be assigned to further segments or sub-groups for website modification based on the probability that those users were motivated by the particular event indicated in signal data (correlating with user data at segment and/or individual level).
- An elevated number of users may arrive at a website or page using a similar unusual search string or to a particular area of the site or its content.
- the system may then correlate this to a signal feed such as TV programme content or a narrative in a TV or radio broadcast within a defined time window and assign a probability based on the user data that those users are currently watching TV/listening to a particular radio station etc and has been influenced by this stimulus.
- Website content may be modified accordingly in near real time and on the user/segment's subsequent visits.
- FIG. 3 is a flow diagram schematically illustrating one embodiment of the system of the invention.
- a step Al user activity relating to an individual user (or unique identifier associated with an individual user) on a web page or application is detected.
- a web monitor tracks the user interaction with the web page, web site or application.
- the activity data is stored and forms part of the user data, as illustrated at step A8.
- step A2 one or more data feed signals are received.
- Data feed signals may include data relating to weather, news, events, sports data, financial market data, health related data eg air quality, pollen count or pollution data, product price data, product inventory data, search trends data eg Google Trends, social media data eg Twitter, Facebook, social media trends data, ECRM events eg internal or competitor data, promotions data, transport related data eg traffic reports, blog data eg competitor blog information, technical events eg service outage, calendar events, social media events, sentiment data, content events eg sports.
- a client is able to select which type of data feed signals to receive and set various rules around receipt of signals, such as weighting of importance, combination of one or more signals etc. These may be received as RSS or Atom feeds.
- correlation information is generated, by comparing and/or associating together the user data with one or more data feed signals. This may involve associating one or more data feed signals with a time period in which user activity is detected and calculating the probability of an association. For example, user data including search terms or phrases may be compared with words or phrases trending in social media or broadcast in other media during a corresponding time period shortly before the search terms were entered by the user.
- the correlation information may comprise a score or probability determined by the system, that there is an association between a particular data feed signal or set of signals and user activity, which may be indicative of a user interest, offline activity, preference, motivation etc.
- the correlation information is stored in a database.
- Taxonomy and segments may be defined by a client, or in certain embodiments, generated automatically by the system - for example using EPG information to assign users to a segment of viewers (or likely viewers) of particular TV programmes or genres.
- a segment may relate to one or more of a large number of classifications, for example, based on a user's interests, preferences, interests, demographic, online behaviour, social groups, transactions, purchase history and the like.
- the process of assigning a user to a segment or subgroup may occur dynamically in near real time as a user navigates a website or enters search terms having a correlation with signal data. In this way, content on whole or part of a web page (or application) may be dynamically modified as the user interacts with the site, such that the content is personalised in near real time based on the most up to date information about that user.
- the content on part or substantially all of a web page, or an application is modified for display to a user at a step A6.
- the content displayed to each unique user is based on the segmentation information specific to that user.
- the impact of the content personalisation on the individual user's interaction with the website or application is determined. This may be measured at the level of an individual by comparing with the user's previous activity/behaviour on a non-personalised site or page, or a site or page personalised to a lesser degree (eg in which the user is assigned to a lower number of segments or broader, more general segments) or having different types of modification to content. For example, modification of content to personalise to an individual user (or user segments) may reveal an increased duration of time spent on a page or site, or an increased propensity to purchase etc.
- Assessment of the effectiveness of particular modifications or types of content modifications at step A7 may be measured at segment or sub-group level.
- the information determined at step A7 is used to provide a feedback loop, which feeds back information on the effectiveness of certain content modifications on user interaction.
- a machine learning algorithm is utilised to optimise the system and the content displayed to a user or group of users on subsequent visits to a website or associated website.
- a number of alternative content items are stored in a database Bl, which forms part of a content management system that serves content to one or more websites.
- Content items are indexed in an index cache in accordance with attributes and relevance to various entities, segments etc.
- the selected content to be displayed to a user of the website may be determined using data feed signals received at or around the time the user visits the website or uses the application.
- Content items are ranked or prioritised at step B3 depending on data feed signals received at B2. For example, if a data feed signal comprises TV metadata indicating that a particular celebrity is appearing on TV at a particular time, content related to the TV programme and/or associated with that celebrity is ranked or weighted more highly than other content within a selected associated time period.
- the actual content selected at a step B4 to display to a user at step B6, when the user visits a web page, will depend on the combination of the ranking of the content from using signal data and the user segmentation information (Fig 4A) at B5 or user interest profile data (Fig 4B). In certain embodiments, it will depend on the segment(s)/group(s)/sub-group(s) to which the individual user has been assigned.
- the user is assigned to a segment based on historical user data stored in database B7, supplemented with real time or near real time activity data collected at step B8 when the user visits the site and correlation data indicating a correlation with input signals received from one or more data feeds.
- the input signal data from a data feed indicates a particular sports event is taking place and trending on social media
- the user data indicates that the user has been assigned to segments "sports fan", “male” and “aged 18-25”
- content relating to the particular sports event and targeted to engage men of that age group may be ranked most highly and displayed to the user via the content management system.
- correlation information may be used to affect the ranking or scoring of content items and/or to dynamically assign the user to one or more further segments or subgroups.
- the correlation information may indicate that it is likely the user is watching the sports event on TV.
- the correlation information may include a correlation based simply on a correlation between the segments (such as
- the correlation may involve correlating data relating to the TV content with more detailed user data such as real time user signals indicating type of user device (eg. a higher probability that the user is watching TV may be assigned if the device is mobile or hand held ie the user is "second screening") and location of user (eg higher probability that user is watching TV if user at usual home address or a residential address).
- the user data may also include search terms/log (eg higher probability if there is correlation with EPG or subtitle data) and historical data indicating user interests in a particular sport, team or player (eg higher probability if user has previously indicated interest in the sport, team or player in the event on TV).
- certain content may be prioritised and/or the user may be dynamically assigned to a segment eg "motivated by TV content” or "viewer of TV sports” and the content ranking and/or selection may be affected accordingly to select content aimed specifically to engage individuals motivated by TV content or viewers of TV sports.
- the probability and/or segmentation may change dynamically with user journey as the user navigates the site, for example by inputting search terms on the site or clicking related content. By clicking related content, the user may be further assigned to a segment "responsive to personalised content”.
- Correlation of user data with text based signal data from a media stream such as TV may include a matching function to match words, word stems or phrases entered by the user or text links or images clicked by the user with subtitle text and/or EPG data. This includes comparing timestamp of the user interaction with that of a broadcast or broadcast metadata.
- the broadcast text or metadata may not necessarily directly match search strings but a correlation may nevertheless be determined by identifying the occurrence of certain words broadcast within a specified time period or close to each other in broadcast sentences.
- delivery of personalised content to users may be achieved by calculating, at a step 409 a user interest metric associated with a specific userlD or other unique identifier, based on user behavioural activity data generated at 408 as the user navigates and engages with content and web pages of the website or web application.
- This system is particularly advantageous for anonymous users since correlation information can be utilised to enhance user browsing experience even when the user is an unknown or non-authenticated user, for whom user (profile) data is limited to web behavioural data only.
- the only user data is therefore browsing behaviour data, such as what the user clicks or dwells on, how often they return to the site, whether they start and abandon the payment process etc.
- This type of information may be collected at step 408 on a user's first visit to a site and enriched on subsequent visits to the site.
- the user can optionally be assigned to a user group segment, which may be used for further filtering of content at a step 405.
- a user may be assigned to a segment based on a certain number of digital interactions, such as eg basket additions, checkout abandons, repeat product views etc.
- the system 105 selects from a set of candidate content items stored in database 401 of a content management system, a subset of candidate content items for delivery to a user. This may be influenced by predetermined rules set by a client. The subset of candidates can be further filtered to maximise optimisation criteria.
- Web content items in database 401 are indexed or otherwise categorised according to content attributes and/or client defined taxonomy.
- Various different metrics between and among content items and web pages can be generated. For example, metadata similarities may be computed by determining keywords associated with the content items, such as style, theme, actor, artist, product type etc.
- content items are categorised by the system of the invention by constructing a map or matrix of web pages and/or specific content items based on similarity of content attributes.
- the system may invoke a content crawler to gather and assimilate content from a website as a pre-processing step.
- a mapping module (not shown) extracts attributes, such as text based descriptors, from the web pages and associates similar web pages and content items based on computing a similarity metric between the extracted attributes.
- crawled pages are parsed and the text extracted is semantically analysed to produce a content profile using natural language processing.
- a parsing heuristic is used to strip out unnecessary data and the semantic analysis associates content categories, concepts, entities and keywords from the structured and unstructured data.
- a user interest profile is updated during the user session (eg at each user interaction such as each click or new page visited) as the user engages with website content.
- a user interest metric is calculated by assigning interest values (reflecting levels of interest in certain content attributes) based on the attributes of the content the user engages with on the site and optionally also the similarity of those content attributes to other content attributes.
- the interest metric calculated at 409 represents the short term interests of the user. For example, a user clicking on content relating to high heeled sandals might be algorithmically assigned interest values of 0.9 for high heeled sandals, 0.7 for summer style and 0.6 for flat sandals.
- Interest values change as the user navigates the site and views other items. There may be a decay factor such that attributes relating to more recently viewed content is assigned a higher value, to more accurately reflect a user's immediate interests, at the present moment, as they are engaging with online content.
- the calculated individual user interest metric is compared with content attributes and the content having the highest relevance is selected at 404 in dependence on certain rules stored in database 407.
- Content relevance is determined (ranked or assigned a relevance score) at 403 based at least partially on similarity or association of its attributes with the user interest metric. Relevance or ranking of content is automatically adjusted with the changing user interest metric over time.
- the relevance score or ranking of content and content selection logic applied at step 403 is also affected by data feed signals received at 402.
- a signal associated with one or more of the content attributes, which is received substantially during or shortly prior to the user session may affect content ranking.
- a signal comprising TV broadcast metadata may indicate that a particular brand of shoes "Brand X" has been mentioned in a television broadcast during the user session.
- the user interest metric at 409 indicates that the user is interested in sandals and the system 105 may rank Brand X sandal products at 403 with a higher weighting than sandal products of other brands, such that one or more Brand X sandal products is displayed to the user at step 406.
- the system calculates a probability that the user is influenced by the broadcast or other data feed signal and thus only factor the signal input into the content ranking for the user if the probability is above a certain threshold.
- Delivery of the content can be further filtered by user segment at step 405.
- Brand X high fashion sandals may be prioritised for delivery to users belonging to a "Fashionista” segment, where content delivered to users belonging to a "Classic” segment may comprise Brand X products in a more classic style.
- user segment "at least 2 basket additions” may receive different content to "repeat viewers of the same product” based on different assumed levels of intent to purchase.
- “Fashionista” and “Classic” may be considered user preference type segments, it will be appreciated that users may also be assigned to behaviour segments such as “Bargain Hunter”, “Cart Abandoner” or by most browsed category, time of last visit etc and content filtered accordingly. Similarly, based on browsing behaviour, a user may be removed from a segment or assigned to a different segment.
- the system 105 retrieves from a content dataset at 401 a number of content items having the highest correlation metrics with the user interest during a time point in the user session.
- the selected set of candidate content items are ranked and one or more of this subset of content items is delivered to the user at step 406.
- Content item(s) may be delivered to predetermined slots in a web page or an entirely different version of a web page may be displayed to the user. Placing of the one or more content item(s) in particular slot positions in a web page or application may also be determined by the correlation data and/or filters at 405.
- the system selects and groups a set of content items to be output to a user device together.
- a set of content items including an editorial piece "Rhianna - Steal Her Style” may be grouped together with product recommendations for bomber jackets and "fashionista style” leather jackets (which content ontology has associated with the singer
- the system determines that one or more attributes of signal data received from the signal data feed at step 402 corresponds to, or is associated with one or more attributes of the user data and/or content attributes (and optionally the system determines at 403 a likelihood above a threshold value that the user is influenced by a media signal broadcast) the subset of candidate content items undergo further processing to assign relevance to items of the candidate subset according to a correlation metric with the signal metadata.
- the system calculates an overall content relevance score based on a combination of highest correlation metric with user interest and highest correlation metric with signal metadata (and which metrics may be appropriately weighted according to rules in database 407), in order to select which content to deliver to the user at 406.
- the system may retrieve content items from a content dataset according to a correlation metric with signal metadata if the system determines that one or more attributes of signal data received from the signal data feed corresponds to or is associated with one or more attributes of the user data and/or content attributes (and optionally the system determines a likelihood above a threshold value that the user is influenced by a media signal broadcast) to generate the subset of candidate content items, which undergo further processing to rank items of the candidate subset according to user interest.
- the system algorithmically combines user interest correlation metrics and signal metadata correlation metrics to determine and execute content selection.
- the selection metric will be recalculated and updated a plurality of times during an interactive browsing session (and during a broadcast, such as a TV broadcast).
- a new calculation may be performed at each user engagement, such as a click, and with each receipt of new relevant signal metadata.
- user engagement may not be limited to clicks and may include other user activities.
- user activity data may include behaviours such as scrolling, typing activities, scroll time, dwell time, links clicked, position clicked or any other interaction with content.
- Metric values reflect and quantify a level of association between one or more attributes of the content items, the user interest, and/or the signal data received substantially within a defined time period of a user session.
- the probability that the user is influenced by a stimulus of digital engagement (such as a media broadcast) represented by the signal data is calculated by the system by correlating signal data with user data.
- a probability score or confidence value may be algorithmically calculated and assigned by the correlation processor and compared with a threshold value to determine any associated relevance weightings to be applied, which may be determined by rules at 407.
- the probability score or confidence value representative of the likelihood the individual user is influence by the signal may be calculated in several ways. It may comprise processing of data substantially in real time from the web monitor indicating a spike or other anomaly in user visits to the website or application, or a spike in web traffic of users belonging to a particular segment and/or exhibiting similar user browsing behaviour and/or unusual activity (eg unusual search term entered, correlates with subtitle data the time of the broadcast/user session (or shortly before).
- a feedback loop (as discussed in relation to the Figures) at step 413 provides a mechanism for optimisation based on user interaction data and or A/B testing from the web monitor. Such data may be useful for optimising rules, weightings, signal feeds, user interest metric, threshold values, segmentation, content presentation, layouts, colour schemes etc. This optimisation may be in relation to an individual user or groups of users/ segments.
- Figure 5 illustrates a simple embodiment of the invention in which a portion CI 1 of a given web page CI, includes content X, which is content selected to be displayed to an unknown user or first time visitor to the website.
- content X is content selected to be displayed to an unknown user or first time visitor to the website.
- a user visits the website, that user is associated with a unique identifier eg by using a cookie, and certain information is collected. Collection of this information and categorisation of the user into one or more segments may occur substantially immediately or shortly after the user arrives on the landing page.
- content may be modified accordingly on one or more sections of the page the user is currently navigating, and/or when the user navigates to another page or section.
- Web page C2 includes a portion C12, which displays content adapted for display to users assigned to a particular segment or segments.
- the user journey is tracked and the user interests may be determined from this such that the user may be assigned to one or more segments based on that interest.
- known users who regularly visit the site may be shown content Z, specifically adapted for "fanatic" or regular visitors, who for example, may not need to see introductory type information such as an explanation of how to use products or purchase items etc.
- the content X, Y, Z may in fact include numerous alternatives.
- content to serve to a portion of the site C13 may be dynamically generated in response to correlation data to reflect the user's likely activity at the time of visit. For example, if the system determines that the user is likely to be watching a particular TV programme, an image or text may be generated directly from and using EPG data, such as image data, to display an image or text relevant to the programme.
- the system can remove content in response to certain inputs. For example, content may be removed to minimise disctractions where a user is near the point of purchase.
- the system of the invention can process either a single input signal or a combination of input signals, which may be substantially simultaneous. Where a combination of signals is used, the processing may comprise evaluation of the signals these with boolean logic on each of the inputs or by using an aggregate of the signals. Aggregation of signals is in real time can be achieved using a number of different methods. In one embodiment, combination of signals is undertaken using weightings and normalisation.
- a processor 601 is configured to process and combine disparate data from multiple inputs 602 of different kinds of data.
- inputs may comprise disparate or heterogeneous data (eg binary data, cumulative data etc). Cumulative data such as, for example, user propensity to purchase may also have a feedback loop (not shown), such that the value or score drops immediately after purchase.
- One or more of the inputs 602 may comprise user data.
- Other inputs 602 may include for example weather, news, event data, sports data, financial market data, health related data, product price data, search trends data, social media data eg, content events eg sports, TV, and the like, TV metadata such as EPG data, subtitles and/or images.
- the processor 601 comprises a signal mixer 603, which combines signal data with various weighting to convert the multiple input signals 602 into a single output signal, which may for example comprise normalised data, such that output to an event processor 604 comprises an absolute number.
- This processing of signal data and conversion to output signal is a substantially continuous process.
- the event processor 604 receives the output signal from the signal mixer 603 and registers events.
- the processor 601 comprises a correlation processor to determine a correlation between input signal data (which may be combined or mixed data) and user data.
- the event processor 604 communicates events to a configuration adapter 605, having a set of configuration records stored in a database 606.
- the configuration adapter 605 responds to events from the event processor 604, such that when a particular event (and signal) occurs the configuration processor 607 determines content configuration in relation to one or more of slot (position on page), configuration (which content to include) and selection criteria (eg signal value) and updates a set of records stored in database 608. This is propagated on to a content server 609, which effects delivery of the content to consumers 610, 610' according to the active configuration.
- Content can be delivered to the consumer (user) 610, 610' in different ways, as illustrated.
- a user 610 may send a request to web server 611 and the web server returns it with a request to the content server 609.
- the content server then serves relevant content based on the active configuration (updated by the
- a web server 612 whilst fulfilling the original request can itself request content from the content server 609 on behalf of a user 610'.
- Dynamic selection of content at runtime can be achieved using predetermined content item criteria (which may include predetermined content attributes).
- predetermined content item criteria which may include predetermined content attributes.
- a web page could use for example a configuration that results in 5 content items being displayed to a user (which, for example may be top selling products).
- executed code may therefore be: query( percentile(monthly-sale-count) > 20) ), items( 5 ) where
- - monthly-sale-count is an attribute for each product or item
- - percentile is a function that returns a value
- predefined criteria may be met to influence the output to include a given product in the results mix(
- - mix is a function to that takes one or more statements and mixes the results
- the input signal may substantially directly affect output of content to a user.
- - category is an attribute for each product or item
- a signal value can be passed through to the template mix(
- - %D_SIG is a token representing the signal which has been normalised to a range between 0 and 1
- the system may effect change of content in response to one or more input signals based on certain criteria or rules accessed by the configuration processor.
- response to one or more input signals may result in output corresponding to an action such as a change in a downstream query, which then affects dynamic content selection.
- Embodiments of the invention and techniques described in this specification can be implemented in digital electronic circuitry, computer software, firmware or hardware, including the structures equivalent to those disclosed in this specification, or in combination thereof.
- the invention can be implemented as one or more computer program products, ie one or more modules of computer program instructions encoded on a computer-readable medium for execution by, or to control the operation of, data processing apparatus.
- the computer program product may written in any
- the method of the invention may be performed by one or more computer processors executing a program tangibly embodied in a machine readable storage device for execution by a computer processor, such a
- a computing device suitable for implementation of the invention may comprise any combination of any number of: a processor, a memory or other storage medium readable and/or writable by the processor -including, for example, volatile and non-volatile memory and/or storage elements which may have a distributed architecture), an input device, and an output device and, or other peripherals that may be communicatively coupled via a local interface, such as one or more buses, wired or unwired connections.
- the processor may be any custom or commercially available processor that can process instructions for execution within the computing device.
- multiple processors and/or multiple buses may be used, as appropriate, along with multiple memories and types of memory including but not limited to any one or combination of volatile memory elements (e.g., random access memory (RAM, such as DRAM, SRAM, SDRAM) and nonvolatile memory elements (e.g., ROM, hard drive, tape, CDROM).
- RAM random access memory
- SRAM static random access memory
- SDRAM nonvolatile memory elements
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Abstract
L'invention concerne un procédé permettant d'exercer une influence sur un contenu web, de réseaux sociaux ou d'application. Le procédé consiste à recevoir et à traiter des données de signal à partir d'une source de données, les données de signal se rapportant à au moins un stimulus d'engagement numérique ; à générer et à stocker des données d'utilisateur ; à identifier et à stocker des données de corrélation comprenant une corrélation entre les données de signal et les données d'utilisateur indiquant l'influence du ou des stimuli d'engagement numérique sur l'engagement numérique de l'utilisateur ; et à modifier le contenu web, de réseaux sociaux ou d'application en réponse à la corrélation.
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| US11200241B2 (en) * | 2017-11-22 | 2021-12-14 | International Business Machines Corporation | Search query enhancement with context analysis |
| CN115735361A (zh) * | 2020-06-29 | 2023-03-03 | 斯纳普公司 | 生成和访问用于产品的视频内容 |
| CN115994266A (zh) * | 2023-01-13 | 2023-04-21 | 北京达佳互联信息技术有限公司 | 资源推荐方法、装置、电子设备和存储介质 |
| CN117097958A (zh) * | 2023-08-16 | 2023-11-21 | 北京有竹居网络技术有限公司 | 一种多媒体内容展示方法、装置、计算机设备及存储介质 |
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| JP7720779B2 (ja) * | 2018-11-13 | 2025-08-08 | スリーエム イノベイティブ プロパティズ カンパニー | 電子商取引コンテンツ生成及び最適化のための深層因果学習 |
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| WO2016071718A2 (fr) * | 2014-11-07 | 2016-05-12 | Fast Web Media Limited | Exercice d'une influence sur un contenu ou sur l'accès à un contenu |
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- 2016-09-01 GB GBGB1614864.5A patent/GB201614864D0/en not_active Ceased
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- 2017-08-31 GB GB1714004.7A patent/GB2556970A/en not_active Withdrawn
- 2017-08-31 WO PCT/GB2017/052536 patent/WO2018042179A1/fr not_active Ceased
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| US20100262449A1 (en) * | 2009-04-09 | 2010-10-14 | Access Mobility, Inc. | Context based mobile marketing |
| US9277275B1 (en) * | 2011-05-03 | 2016-03-01 | Google Inc. | System and method for associating individual household members with television programs viewed |
| WO2016071718A2 (fr) * | 2014-11-07 | 2016-05-12 | Fast Web Media Limited | Exercice d'une influence sur un contenu ou sur l'accès à un contenu |
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| Publication number | Priority date | Publication date | Assignee | Title |
|---|---|---|---|---|
| US11200241B2 (en) * | 2017-11-22 | 2021-12-14 | International Business Machines Corporation | Search query enhancement with context analysis |
| CN115735361A (zh) * | 2020-06-29 | 2023-03-03 | 斯纳普公司 | 生成和访问用于产品的视频内容 |
| US12120074B2 (en) | 2020-06-29 | 2024-10-15 | Snap Inc. | Generating and accessing video content for products |
| CN115994266A (zh) * | 2023-01-13 | 2023-04-21 | 北京达佳互联信息技术有限公司 | 资源推荐方法、装置、电子设备和存储介质 |
| CN117097958A (zh) * | 2023-08-16 | 2023-11-21 | 北京有竹居网络技术有限公司 | 一种多媒体内容展示方法、装置、计算机设备及存储介质 |
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| GB201614864D0 (en) | 2016-10-19 |
| GB201714004D0 (en) | 2017-10-18 |
| GB2556970A (en) | 2018-06-13 |
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