Clustering Web Retrieval Results Accompanied by Removing Duplicate Documents

Xinye Li, Qinhai Yang, LinNa Zeng
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引用次数: 3

Abstract

Since keyword-based search engine usually return large amount of results in which there are many unrelated documents and many documents with same content, automatic clustering technology is used to classify the retrieval results. While there are large amount of Web retrieval results, the clustering process usually costs long time and the clusters are not friendly to users since there are still many documents with same content. This paper proposed an improved clustering method by removing the duplicate documents from retrieval results. The removal operation is executed first in initial partition stage during clustering. Then it is executed again after the initial partition stage to remove the duplicate documents thoroughly. We proposed an efficient removal method in this stage. At last, we made experiment to verify our method.
基于删除重复文档的Web检索结果聚类
由于基于关键字的搜索引擎通常会返回大量的结果,其中有许多不相关的文档和许多具有相同内容的文档,因此使用自动聚类技术对检索结果进行分类。虽然Web检索结果非常多,但聚类过程通常耗时较长,而且聚类对用户并不友好,因为仍然存在许多内容相同的文档。本文提出了一种改进的聚类方法,从检索结果中去除重复文档。在集群期间,移除操作首先在初始分区阶段执行。然后在初始分区阶段之后再次执行它,以彻底删除重复的文档。我们在这一阶段提出了一种高效的去除方法。最后,通过实验验证了本文的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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