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Group-Level Analysis by Extracting Semantic Relations from Query Graph

机译:通过从查询图中提取语义关系进行组级别分析

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Recently, a growing number of researches have focused on the issues raised by the knowledge discovery of online information, particularly the problems of tracking topics, ideas, and usersȁ9; spreading influence across the Web. In this paper, the search-engine query logs on Topic Detection and Tracking (TDT) is analyzed other than study of the quality of the search result or query recommendation. By constructing a novel bi-type heterogeneous query graph, the queriesȁ9; semantic similarity and query-URL relation are combined together. Utilizing social network analysis (SNA) method to analyze the query graph with optimization of the community discovery algorithm LPA by grouping the nodes who are linked with the same URL initially, we can find the topics in the query logs. To evaluate the topic evolution pattern, we group the similar communities over each adjacent time stamps into clusters. Extensive experiments demonstrate the effectiveness and efficiency of the methods.
机译:最近,越来越多的研究集中在在线信息的知识发现引发的问题上,尤其是跟踪主题,思想和用户的问题[9]。在网络上传播影响力。在本文中,除了研究搜索结果或查询推荐的质量外,还分析了主题检测和跟踪(TDT)上的搜索引擎查询日志。通过构造一个新颖的双类型异构查询图,查询ȁ9;语义相似性和查询-URL关系被组合在一起。利用社交网络分析(SNA)方法,通过对最初与相同URL链接的节点进行分组,通过优化社区发现算法LPA来分析查询图,我们可以在查询日志中找到主题。为了评估主题演变模式,我们将每个相邻时间戳上的相似社区分为几类。大量实验证明了该方法的有效性和有效性。

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