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Collective Evolutionary Concept Distance Based Query Expansion for Effective Web Document Retrieval

机译:基于集体进化概念距离的有效Web文档检索查询扩展

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In this work several semantic approaches to concept-based query expansion and re-ranking schemes are studied and compared with different ontology-based expansion methods in web document search and retrieval. In particular, we focus on concept-based query expansion schemes where, in order to effectively increase the precision of web document retrieval and to decrease the users' browsing time, the main goal is to quickly provide users with the most suitable query expansion. Two key tasks for query expansion in web document retrieval are to find the expansion candidates, as the closest concepts in web document domain, and to rank the expanded queries properly. The approach we propose aims at improving the expansion phase for better web document retrieval and precision. The basic idea is to measure the distance between candidate concepts using the PMING distance, a collaborative semantic proximity measure, i.e. a measure which can be computed using statistical results from a web search engine. Experiments show that the proposed technique can provide users with more satisfying expansion results and improve the quality of web document retrieval.
机译:在这项工作中,研究了几种用于基于概念的查询扩展和重新排序方案的语义方法,并将其与Web文档搜索和检索中基于本体的不同扩展方法进行了比较。特别是,我们专注于基于概念的查询扩展方案,为了有效地提高Web文档检索的准确性并减少用户的浏览时间,主要目标是快速为用户提供最合适的查询扩展。 Web文档检索中查询扩展的两个关键任务是找到扩展候选,作为Web文档领域中最接近的概念,并对扩展的查询进行正确排序。我们提出的方法旨在改善扩展阶段,以实现更好的Web文档检索和精度。基本思想是使用PMING距离测量候选概念之间的距离,PMING距离是一种协作式语义接近度度量,即一种可以使用来自Web搜索引擎的统计结果来计算的度量。实验表明,该技术可以为用户提供更令人满意的扩展结果,并提高Web文档检索的质量。

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