使用语义相似度对web文档进行排序

P. Chahal, M. Singh, S. Kumar
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引用次数: 25

摘要

近年来,网络上相关文献的语义搜索一直是一个重要的研究课题。许多语义网络搜索引擎已经被开发出来,比如Ontolook, Swoogle等,它们可以帮助搜索语义网络上呈现的有意义的文档。语义相似度的概念已广泛应用于人工智能、认知科学、自然语言处理、心理学等领域。为了将具有相同含义的实体/文本/文档关联起来,使用语义相似方法对从文档中提取的关键字进行匹配。语义搜索引擎通常使用的简单的词法匹配并不能提取出用户期望的web文档。本文提出了一种通过查找文档与用户指定查询之间的语义相似度来对语义web文档进行排序的方案。本文提出的新方法不仅依赖于文档的句法结构,而且考虑了文档和查询的语义结构。这里使用的方法包括词汇匹配和概念匹配。概念匹配、语言匹配和本体匹配的结合使用显著提高了所提出的排序方案的性能。我们探索用户意图的关键字之间的所有相关关系,然后计算这些关系在每个网页上的比例,以确定它们与用户提供的查询的相关性。我们发现,这种基于语义相似度的排序方案比现有的排序方法得到了更好的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Ranking of web documents using semantic similarity
In recent years, semantic search for relevant documents on web has been an important topic of research. Many semantic web search engines have been developed like Ontolook, Swoogle, etc that helps in searching meaningful documents presented on semantic web. The concept of semantic similarity has been widely used in many fields like artificial intelligence, cognitive science, natural language processing, psychology. To relate entities/texts/documents having same meaning, semantic similarity approach is used based on matching of the keywords which are extracted from the documents using syntactic parsing. The simple lexical matching usually used by semantic search engine does not extract web documents to the user expectations. In this paper we have proposed a ranking scheme for the semantic web documents by finding the semantic similarity between the documents and the query which is specified by the user. The novel approach proposed in this paper not only relies on the syntactic structure of the document but also considers the semantic structure of the document and the query. The approach used here includes the lexical as well as the conceptual matching. The combined use of conceptual, linguistic and ontology based matching has significantly improved the performance of the proposed ranking scheme. We explore all relevant relations between the keywords exploring the user's intention and then calculate the fraction of these relations on each web page to determine their relevance with respect to the query provided by the user. We have found that this semantic similarity based ranking scheme gives much better results than those by the prevailing methods.
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