信息检索的概念化查询

Yan Chen, H. Sekiya, T. Takagi
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引用次数: 3

摘要

许多搜索引擎都是基于术语的信息检索模型。这种模型的缺点是不考虑词义。如果我们可以表示用户输入的术语的含义,IR系统就可以检索到用户真正想要的信息;不仅仅是条件匹配。为了表示词义,我们提出了概念模糊集(CFSs)。CFS是一个表示单词概念并随模糊集动态变化的框架。在本文中,我们使用使用cfs的概念化查询对文档进行概念检索实验。在我们的实验中,我们在一个由100万个新闻通讯社文本数据组成的大规模语料库上评估了我们的系统。实验结果表明,该红外系统的性能得到了改善。结果表明,在IR系统中生成概念化查询是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Conceptualized Query for Information Retrieval
Many search engines are term-based information retrieval models. The disadvantage of this type of model is that it does not consider word sense. If we can represent the meanings of the terms that a user inputs, the IR system can retrieve the information the user really wants; not simply match the terms. To represent word sense, we proposed conceptual fuzzy sets (CFSs). A CFS is a framework that represents word concepts and that changes dynamically with fuzzy sets. In this paper, we experiment with concept retrieval for documents using conceptualized queries using CFSs. In our experiment, we evaluated our system on a large-scale corpus consisting of 1 million newswire text data. The experimental results showed that the performance of the IR system was improved. It also indicated that generating conceptualized queries is effective in an IR system.
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