Feature based ranking adjustment
    1.
    发明授权

    公开(公告)号:US10055463B1

    公开(公告)日:2018-08-21

    申请号:US14946233

    申请日:2015-11-19

    Applicant: Google LLC

    CPC classification number: G06F16/24578 G06F16/951

    Abstract: Methods, systems, and apparatus, including computer programs encoded on a computer storage medium, for feature-based ranking adjustment. In one aspect, a method includes finalizing rankings of resources based on detected features, and for each resource for which a ranking is not finalized, finalizing the respective resources or demoting the resources based on the detection of features common to the resources with the finalized rankings and the resources with the unfinalized rankings.

    Generating, using a machine learning model, request agnostic interaction scores for electronic communications, and utilization of same

    公开(公告)号:US11514353B2

    公开(公告)日:2022-11-29

    申请号:US15795204

    申请日:2017-10-26

    Applicant: Google LLC

    Abstract: Training and/or utilizing a machine learning model to generate request agnostic predicted interaction scores for electronic communications, and to utilization of request agnostic predicted interaction scores in determining whether, and/or how, to provide corresponding electronic communications to a client device in response to a request. A request agnostic predicted interaction score for an electronic communication provides an indication of quality of the communication, and is generated independent of corresponding request(s) for which it is utilized. In many implementations, a request agnostic predicted interaction score for an electronic communication is generated “offline” relative to corresponding request(s) for which it is utilized, and is pre-indexed with (or otherwise assigned to) the electronic communication. This enables fast and efficient retrieval, and utilization, of the request agnostic interaction score by computing device(s), when the electronic communication is responsive to a request.

    GENERATING, USING A MACHINE LEARNING MODEL, REQUEST AGNOSTIC INTERACTION SCORES FOR ELECTRONIC COMMUNICATIONS, AND UTILIZATION OF SAME

    公开(公告)号:US20190130304A1

    公开(公告)日:2019-05-02

    申请号:US15795204

    申请日:2017-10-26

    Applicant: Google LLC

    Abstract: Training and/or utilizing a machine learning model to generate request agnostic predicted interaction scores for electronic communications, and to utilization of request agnostic predicted interaction scores in determining whether, and/or how, to provide corresponding electronic communications to a client device in response to a request. A request agnostic predicted interaction score for an electronic communication provides an indication of quality of the communication, and is generated independent of corresponding request(s) for which it is utilized. In many implementations, a request agnostic predicted interaction score for an electronic communication is generated “offline” relative to corresponding request(s) for which it is utilized, and is pre-indexed with (or otherwise assigned to) the electronic communication. This enables fast and efficient retrieval, and utilization, of the request agnostic interaction score by computing device(s), when the electronic communication is responsive to a request.

    Populating streams of content
    5.
    发明授权

    公开(公告)号:US10409818B1

    公开(公告)日:2019-09-10

    申请号:US15228756

    申请日:2016-08-04

    Applicant: Google LLC

    Abstract: Methods, systems, apparatus, including computer programs encoded on computer storage medium, for a bottom-up approach for generating high-quality content streams. In one aspect, the method includes actions of obtaining data identifying a plurality of content items, generating a plurality of queries for the particular topic, and for each query of the plurality of queries: obtaining a set of search results for the query that identify content items identified in the obtained data, and determining, from the search results for the query, a respective quality score for each of one or more quality characteristics. The method may also include actions such as identifying one or more first high-quality queries from the plurality of queries based on the respective quality scores for the one or more quality characteristics, and populating a stream of content for display on the user device using search results for the one or more first high-quality queries.

Patent Agency Ranking