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Web search result optimization by mining the search engine query logs

机译:通过挖掘搜索引擎查询日志来优化Web搜索结果

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Modern Information Retrieval Systems match the terms of a user query with available documents in their index and return a large number of Web pages generally in the form of a ranked list. It becomes almost impractical at the user end to examine every returned document, thus necessitating the need to look for some means of result optimization. In this paper, a novel result optimization technique based on learning from historical query logs is being proposed, which predicts users' information needs and reduces their navigation time within the result list. The method first performs query clustering in query logs based on a novel similarity function and then captures the sequential patterns of clicked web pages in each cluster using a sequential pattern mining algorithm. Finally, search result list is re-ranked by updating the existing PageRank values of pages using the discovered sequential patterns. The proposed work results in reduced search space as user intended pages tend to move upwards in the result list.
机译:现代信息检索系统将用户查询的条件与其索引中的可用文档相匹配,并通常以排名列表的形式返回大量Web页面。在用户端检查每个返回的文档几乎变得不切实际,因此需要寻找某种结果优化的方法。本文提出了一种基于从历史查询日志中学习的结果优化新技术,该技术可以预测用户的信息需求并减少他们在结果列表中的导航时间。该方法首先基于新颖的相似性函数在查询日志中执行查询聚类,然后使用顺序模式挖掘算法捕获每个群集中单击的网页的顺序模式。最后,通过使用发现的顺序模式更新页面的现有PageRank值,对搜索结果列表进行重新排序。由于用户期望的页面在结果列表中倾向于向上移动,因此建议的工作会减少搜索空间。

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