发明名称 CLICK MODELING FOR URL PLACEMENTS IN QUERY RESPONSE PAGES
摘要 A “General Click Model” (GCM) is constructed using a Bayesian network that is inherently capable of modeling “tail queries” by building the model on multiple attribute values that are shared across queries. More specifically, the GCM learns and predicts user click behavior towards URLs displayed on a query results page returned by a search engine. Unlike conventional click modeling approaches that learn models based on individual queries, the GCM learns click models from multiple attributes, with the influence of different attribute values being measured by Bayesian inference. This provides an advantage in learning that enables the GCM to achieve improved generalization and results, especially for tail queries, than conventional click models. In addition, most conventional click models consider only position and the identity of URLs when learning the model. In contrast, the GCM considers more session-specific attributes in making a final prediction for anticipated or expected user click behaviors.
申请公布号 US2011302031(A1) 申请公布日期 2011.12.08
申请号 US20100795631 申请日期 2010.06.07
申请人 CHEN WEIZHU;WANG GANG;CHEN ZHENG;FAN ZHIKAI;MINKA THOMAS;MICROSOFT CORPORATION 发明人 CHEN WEIZHU;WANG GANG;CHEN ZHENG;FAN ZHIKAI;MINKA THOMAS
分类号 G06F15/18;G06N5/02;G06Q30/00 主分类号 G06F15/18
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