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Post-analysis of Keyword-Based Search Results Using Entity Mining, Linked Data, and Link Analysis at Query Time

机译:在查询时使用实体挖掘,链接数据和链接分析对基于关键字的搜索结果进行后分析

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The integration of the classical Web (of documents) with the emerging Web of Data is a challenging vision. In this paper we focus on an integration approach during searching which aims at enriching the responses of non-semantic search systems (e.g. professional search systems, web search engines) with semantic information, i.e. Linked Open Data (LOD), and exploiting the outcome for providing an overview of the search space and allowing the users (apart from restricting it) to explore the related LOD. We use named entities (e.g. persons, locations, etc.) as the "glue" for automatically connecting search hits with LOD. We consider a scenario where this entity-based integration is performed at query time with no human effort, and no a-priori indexing, which is beneficial in terms of configurability and freshness. To realize this scenario one has to tackle various challenges. One spiny issue is that the number of identified entities can be high, the same is true for the semantic information about these entities that can be fetched from the available LOD (i.e. their properties and associations with other entities). To this end, in this paper we propose a Link Analysis-based method which is used for (a) ranking (and thus selecting to show) the more important semantic information related to the search results, (b) deriving and showing top-K semantic graphs. In the sequel, we report the results of a survey regarding the marine domain with promising results, and comparative results that illustrate the effectiveness of the proposed (Page Rank-based) ranking scheme. Finally, we report experimental results regarding efficiency showing that the proposed functionality can be offered even at query time.
机译:将经典Web(文档)与新兴的Web of Data集成是一个具有挑战性的愿景。在本文中,我们专注于搜索过程中的一种集成方法,该方法旨在利用语义信息(即链接的开放数据(LOD))丰富非语义搜索系统(例如专业搜索系统,Web搜索引擎)的响应,并利用结果提供搜索空间的概述,并允许用户(除限制搜索空间外)浏览相关的LOD。我们使用命名实体(例如人,地点等)作为“胶水”,以自动将搜索结果与LOD连接起来。我们考虑了这样一种场景:在查询时无需人工就可以执行这种基于实体的集成,并且无需先验索引,这在可配置性和新鲜度方面都是有益的。为了实现这种情况,必须解决各种挑战。一个棘手的问题是,已识别实体的数量可能很高,关于可以从可用LOD中获取的有关这些实体的语义信息(即,它们的属性以及与其他实体的关联)也是如此。为此,在本文中,我们提出了一种基于链接分析的方法,该方法用于(a)排序(并选择显示)与搜索结果相关的更重要的语义信息,(b)推导并显示top-K语义图。在续集中,我们报告了有关海洋领域的调查结果,并提出了令人鼓舞的结果,而比较结果则表明了拟议的(基于页面排名的)排名方案的有效性。最后,我们报告了有关效率的实验结果,表明即使在查询时间也可以提供建议的功能。

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