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公开(公告)号:US20190180357A1
公开(公告)日:2019-06-13
申请号:US16280716
申请日:2019-02-20
申请人: Google LLC
发明人: Shilpa Arora , Colin McCulloch , Niyati Yagnik , Creighton Thomas , Manohar Prabhu , Timothy Lipus , Michael Eugene Aiello , Yi Zhang , Ajay Kumar Bangla , Bahman Rabii , Gaofeng Zhao , Yingweii Cui
IPC分类号: G06Q30/08 , G06N20/00 , G06F16/2457 , G06F16/951 , G06F16/958
CPC分类号: G06Q30/08 , G06F16/24578 , G06F16/951 , G06F16/958 , G06N20/00
摘要: The present disclosure selects third party content based on feedback. A selector identifies several content items including first and second content items (or more) responsive to a request. A machine learning engine determines a first feature of the first content item, a second feature of the second content item, and a third feature of the web page or a device associated with the request. The machine learning engine determines, responsive to the first feature and the third feature, a first score for the first content item based on a machine learning model generated using historical signals received from devices via a metadata channel formed from an electronic feedback interface. The machine learning engine determines a second score for the second content item responsive to the second feature and the third feature. A bidding module determines a price for the first content item based on the first and second scores.
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公开(公告)号:US10817931B2
公开(公告)日:2020-10-27
申请号:US16280716
申请日:2019-02-20
申请人: Google LLC
发明人: Shilpa Arora , Colin McCulloch , Niyati Yagnik , Creighton Thomas , Manohar Prabhu , Timothy Lipus , Michael Eugene Aiello , Yi Zhang , Ajay Kumar Bangla , Bahman Rabii , Gaofeng Zhao , Yingwei Cui
IPC分类号: G06Q30/00 , G06Q30/08 , G06N20/00 , G06F16/951 , G06F16/958 , G06F16/2457
摘要: The present disclosure selects third party content based on feedback. A selector identifies several content items including first and second content items (or more) responsive to a request. A machine learning engine determines a first feature of the first content item, a second feature of the second content item, and a third feature of the web page or a device associated with the request. The machine learning engine determines, responsive to the first feature and the third feature, a first score for the first content item based on a machine learning model generated using historical signals received from devices via a metadata channel formed from an electronic feedback interface. The machine learning engine determines a second score for the second content item responsive to the second feature and the third feature. A bidding module determines a price for the first content item based on the first and second scores.
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公开(公告)号:US20240354839A1
公开(公告)日:2024-10-24
申请号:US18762422
申请日:2024-07-02
申请人: GOOGLE LLC
发明人: Shilpa Arora , Colin McCulloch , Niyati Yagnik , Creighton Thomas , Manohar Prabhu , Timothy Lipus , Michael Eugene Aiello , Yi Zhang , Ajay Kumar Bangla , Bahman Rabii , Gaofeng Zhao , Yingwei Cui
IPC分类号: G06Q30/08 , G06F16/2457 , G06F16/951 , G06F16/958 , G06N20/00
CPC分类号: G06Q30/08 , G06F16/24578 , G06F16/951 , G06F16/958 , G06N20/00
摘要: A method and system for adjusting ads auction using predicted user responses to an in-ad survey is provided. The method includes (1) providing a content item associated with an actionable object, which when selected, causes a computing device to present a plurality of interactive elements each corresponding to a different one of a plurality of reasons for restricting the content item; (2) receiving, from the computing device, data indicating a particular reason, of the plurality of reasons, for restricting the content item, and the particular reason corresponding to a particular interactive element, of the plurality of interactive elements, that was selected by the user; and (3) updating, using the received data, a content selection model for selecting content items, wherein the content selection model is associated with the user.
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公开(公告)号:US12062085B2
公开(公告)日:2024-08-13
申请号:US17074132
申请日:2020-10-19
申请人: Google LLC
发明人: Shilpa Arora , Colin McCulloch , Niyati Yagnik , Creighton Thomas , Manohar Prabhu , Timothy Lipus , Michael Eugene Aiello , Yi Zhang , Ajay Kumar Bangla , Bahman Rabii , Gaofeng Zhao , Yingwei Cui
IPC分类号: G06Q30/00 , G06F16/2457 , G06F16/951 , G06F16/958 , G06N20/00 , G06Q30/08
CPC分类号: G06Q30/08 , G06F16/24578 , G06F16/951 , G06F16/958 , G06N20/00
摘要: The present disclosure selects third party content based on feedback. A selector identifies several content items including first and second content items (or more) responsive to a request. A machine learning engine determines a first feature of the first content item, a second feature of the second content item, and a third feature of the web page or a device associated with the request. The machine learning engine determines, responsive to the first feature and the third feature, a first score for the first content item based on a machine learning model generated using historical signals received from devices via a metadata channel formed from an electronic feedback interface. The machine learning engine determines a second score for the second content item responsive to the second feature and the third feature. A bidding module determines a price for the first content item based on the first and second scores.
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公开(公告)号:US20210035207A1
公开(公告)日:2021-02-04
申请号:US17074132
申请日:2020-10-19
申请人: Google LLC
发明人: Shilpa Arora , Colin McCulloch , Niyati Yagnik , Creighton Thomas , Manohar Prabhu , Timothy Lipus , Michael Eugene Aiello , Yi Zhang , Ajay Kumar Bangla , Bahman Rabii , Gaofeng Zhao , Yingwei Cui
IPC分类号: G06Q30/08 , G06F16/2457 , G06N20/00 , G06F16/958 , G06F16/951
摘要: The present disclosure selects third party content based on feedback. A selector identifies several content items including first and second content items (or more) responsive to a request. A machine learning engine determines a first feature of the first content item, a second feature of the second content item, and a third feature of the web page or a device associated with the request. The machine learning engine determines, responsive to the first feature and the third feature, a first score for the first content item based on a machine learning model generated using historical signals received from devices via a metadata channel formed from an electronic feedback interface. The machine learning engine determines a second score for the second content item responsive to the second feature and the third feature. A bidding module determines a price for the first content item based on the first and second scores.
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