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Refining preference-based search results through Bayesian filtering

机译:通过贝叶斯过滤细化基于首选项的搜索结果

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Preference-based search (PBS) is a popular approach for helping consumers find their desired items from online catalogs. Currently most PBS tools generate search results by a certain set of criteria based on preferences elicited from the current user during the interaction session. Due to the incompleteness and uncertainty of the user's preferences, the search results are often inaccurate and may contain items that the user has no desire to select. In this paper we develop an efficient Bayesian filter based on a group of users' past choice behavior and use it to refine the search results by filtering out items which are unlikely to be selected by the user. Our preliminary experiment shows that our approach is highly promising in generating more accurate search results and saving user's interaction effort.
机译:基于首选项的搜索(PBS)是一种流行的方法,可以帮助消费者从在线目录中找到所需的商品。当前,大多数PBS工具都基于在交互会话期间从当前用户得出的首选项,通过一组特定的标准来生成搜索结果。由于用户偏好的不完整和不确定性,搜索结果通常不准确,并且可能包含用户不希望选择的项目。在本文中,我们基于一组用户的过去选择行为开发了一种有效的贝叶斯过滤器,并通过过滤掉用户不太可能选择的项目来使用它来优化搜索结果。我们的初步实验表明,我们的方法在产生更准确的搜索结果并节省用户的交互工作方面非常有前途。

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