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A Framework of Feedback Search Engine Motivated by Content Relevance Mining

机译:基于内容相关挖掘的反馈搜索引擎框架

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Most current web search engines generate search results by analyzing queries and relevance between queries and web-pages. However, as the number of web-pages grows, this approach appears to be less efficient in finding relevant information. In many situations, search engines cannot determine what kind of information users want. We propose a framework of Feedback Search Engine (FSE), which not only analyzes the relevance between queries and web-pages but also uses clickthrough data to evaluate page-to-page relevance and re-generate content relevant search results. The efficient algorithms facilitating the framework are described. Making use of dynamical re-generating search results, FSE can provide its users more accurate and personalized information.
机译:当前的大多数Web搜索引擎都通过分析查询以及查询与网页之间的相关性来生成搜索结果。但是,随着网页数量的增加,这种方法在查找相关信息方面似乎效率较低。在许多情况下,搜索引擎无法确定用户所需的信息类型。我们提出了一个反馈搜索引擎(FSE)框架,该框架不仅分析查询和网页之间的相关性,而且使用点击数据来评估页面与页面的相关性并重新生成与内容相关的搜索结果。描述了促进该框架的有效算法。 FSE利用动态重新生成的搜索结果,可以为用户提供更准确和个性化的信息。

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