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公开(公告)号:US09967211B2
公开(公告)日:2018-05-08
申请号:US14726569
申请日:2015-05-31
发明人: Michel Galley , Alessandro Sordoni , Christopher John Brockett , Jianfeng Gao , William Brennan Dolan , Yangfeng Ji , Michael Auli , Margaret Ann Mitchell , Christopher Brian Quirk
CPC分类号: H04L51/02 , G06F17/2881 , H04L51/10 , H04L51/26
摘要: Examples are generally directed towards automatic assessment of machine generated conversational responses. Context-message-response n-tuples are extracted from at least one source of conversational data to generate a set of multi-reference responses. A response in the set of multi-reference responses includes it context-message data pair and rating. The rating indicates a quality of the response relative to the context-message data pair. A response assessment engine generates a metric score for a machine-generated response based on an assessment metric and the set of multi-reference responses. The metric score indicates a quality of the machine-generated conversational response relative to a user-generated message and a context of the user-generated message. A response generation system of a computing device, such as a digital assistant, is optimized and adjusted based on the metric score to improve the accuracy, quality, and relevance of responses output to the user.
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公开(公告)号:US10536402B2
公开(公告)日:2020-01-14
申请号:US16112611
申请日:2018-08-24
发明人: Michel Galley , Alessandro Sordoni , Christopher John Brockett , Jianfeng Gao , William Brennan Dolan , Yangfeng Ji , Michael Auli , Margaret Ann Mitchell , Jian-Yun Nie
摘要: Examples are generally directed towards context-sensitive generation of conversational responses. Context-message-response n-tuples are extracted from at least one source of conversational data to generate a set of training context-message-response n-tuples. A response generation engine is trained on the set of training context-message-response n-tuples. The trained response generation engine automatically generates a context-sensitive response based on a user generated input message and conversational context data. A digital assistant utilizes the trained response generation engine to generate context-sensitive, natural language responses that are pertinent to user queries.
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公开(公告)号:US10091140B2
公开(公告)日:2018-10-02
申请号:US14726562
申请日:2015-05-31
发明人: Michel Galley , Alessandro Sordoni , Christopher John Brockett , Jianfeng Gao , William Brennan Dolan , Yangfeng Ji , Michael Auli , Margaret Ann Mitchell , Jian-Yun Nie
摘要: Examples are generally directed towards context-sensitive generation of conversational responses. Context-message-response n-tuples are extracted from at least one source of conversational data to generate a set of training context-message-response n-tuples. A response generation engine is trained on the set of training context-message-response n-tuples. The trained response generation engine automatically generates a context-sensitive response based on a user generated input message and conversational context data. A digital assistant utilizes the trained response generation engine to generate context-sensitive, natural language responses that are pertinent to user queries.
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