NATURAL LANGUAGE-BASED SEARCH AND DISCOVERY OF CONTENT SERVICE

    公开(公告)号:US20210073302A1

    公开(公告)日:2021-03-11

    申请号:US16561554

    申请日:2019-09-05

    Abstract: A method, a device, and a non-transitory storage medium are described, which provide a natural language-based content search and discovery service. The natural language-based content search and discovery service may use query object types as a basis for interpreting a vocalized search query from a user. The natural language-based content search and discovery service may use a multi-interpretative procedure that includes use of a probabilistic grammar parser, parts of speech, and query object type identification that are configured for a media domain. The natural language-based content search and discovery service may merge different interpretations of the search query based on probability values associated with each interpretation.

    Media content recommendation and user interface generation

    公开(公告)号:US10747803B2

    公开(公告)日:2020-08-18

    申请号:US16052255

    申请日:2018-08-01

    Abstract: A method, a device, and a non-transitory storage medium are described in which a personalized content recommendation system determines a content-offering value (COV) for each title of content identified in a content catalog, wherein the COVs indicate terms of offerings to a user for consuming each title of content; calculate, for each title of content, a content-relevance value (CRV), wherein the CRV indicates respective relevancies of each title of content to the user; calculate, for each title of content, a cost-content sensitivity index (CCSI) value indicative of the user's relative cost and content sensitivities, wherein the CCSI value is calculated for a time-of-day parameter or a content-genre parameter for consuming each title of content; calculate, for each title of content, a cost-content tradeoff score (CCTS) based on the COV, CRV, and CCSI value; and identify k number of titles of content having the highest CCTS.

    MEDIA CONTENT RECOMMENDATION AND USER INTERFACE GENERATION

    公开(公告)号:US20200042605A1

    公开(公告)日:2020-02-06

    申请号:US16052255

    申请日:2018-08-01

    Abstract: A method, a device, and a non-transitory storage medium are described in which a personalized content recommendation system determines a content-offering value (COV) for each title of content identified in a content catalog, wherein the COVs indicate terms of offerings to a user for consuming each title of content; calculate, for each title of content, a content-relevance value (CRV), wherein the CRV indicates respective relevancies of each title of content to the user; calculate, for each title of content, a cost-content sensitivity index (CCSI) value indicative of the user's relative cost and content sensitivities, wherein the CCSI value is calculated for a time-of-day parameter or a content-genre parameter for consuming each title of content; calculate, for each title of content, a cost-content tradeoff score (CCTS) based on the COV, CRV, and CCSI value; and identify k number of titles of content having the highest CCTS.

    Relevance-based search and discovery for media content delivery

    公开(公告)号:US11620342B2

    公开(公告)日:2023-04-04

    申请号:US16368135

    申请日:2019-03-28

    Abstract: A method, a device, and a non-transitory storage medium are described, which provide for calculating a first relevance score for each content item of a set of content items, wherein the first relevance scores correspond to a relevance of each content item with respect to a query term according to a term-weighting scheme; calculating, for each content item, a program title relevance score; a media personality relevance score; a media network relevance score; and a live programming event relevance score; ranking each content item based on the program title relevance scores, the media personality relevance scores, the media network relevance scores, and the live event relevance scores; receiving a user input search term; generating, based on the search term, a user interface including multiple graphic icons corresponding to a number of the ranked content items; and presenting, via the user interface, the multiple graphic icons for selection by a user.

    RELEVANCE-BASED SEARCH AND DISCOVERY FOR MEDIA CONTENT DELIVERY

    公开(公告)号:US20200311150A1

    公开(公告)日:2020-10-01

    申请号:US16368135

    申请日:2019-03-28

    Abstract: A method, a device, and a non-transitory storage medium are described, which provide for calculating a first relevance score for each content item of a set of content items, wherein the first relevance scores correspond to a relevance of each content item with respect to a query term according to a term-weighting scheme; calculating, for each content item, a program title relevance score; a media personality relevance score; a media network relevance score; and a live programming event relevance score; ranking each content item based on the program title relevance scores, the media personality relevance scores, the media network relevance scores, and the live event relevance scores; receiving a user input search term; generating, based on the search term, a user interface including multiple graphic icons corresponding to a number of the ranked content items; and presenting, via the user interface, the multiple graphic icons for selection by a user.

    MEDIA CONTENT RECOMMENDATION AND USER INTERFACE GENERATION

    公开(公告)号:US20200342020A1

    公开(公告)日:2020-10-29

    申请号:US16928395

    申请日:2020-07-14

    Abstract: A method, a device, and a non-transitory storage medium for determining, based on media content selection activity of a user for a media content inventory, the user's sensitivity to a cost and to a relevance of the media content; assigning a cost value to respective media content items based on user-specific content cost information from media content providers; assigning a relevance value to the respective media content items based on user-specific content relevancy information associated with the respective media content items; ranking the media content items based on: the user's sensitivity to the cost of the media content relative to the cost values for the respective media content items, and the user's sensitivity to the relevance of the media content relative to the relevance values for the respective media content items; and presenting, via a personalized media content recommendation interface, an ordering of the media content items based on the ranking.

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