A clustering technique using single pass clustering algorithm for search engine

Zul Indra, Norshuani Zamin, J. Jaafar
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引用次数: 5

Abstract

Internet users rely heavily on search engine to explore and find useful information buried in the websites. Up to now, the search results returned by the search engines are still far from satisfaction due to a long list of search results which in practice contains a mix of relevant and irrelevant information. The manual process of filtering the irrelevant information is daunting and time consuming. Clustering is one of the popular solutions for this cumbersome task. However, our literature studies revealed that research on document clustering for Asian languages are relatively limited as compared to English. Whilst the application of document clustering technique in search engines is commonly less available. In this research, a clustering technique for search engine using Single Pass Clustering (SPC) Algorithm is proposed. The technique is experimented on a set of Indonesian news documents to support the limited research of document clustering for Indonesian language. An experiment done on 200 Indonesian news documents has produced a number of satisfactory labelled clusters and the application of the algorithm is shown on a simulated search engine.
一种基于单遍聚类算法的搜索引擎聚类技术
互联网用户严重依赖搜索引擎来探索和寻找隐藏在网站中的有用信息。到目前为止,搜索引擎返回的搜索结果仍然远远不能令人满意,因为搜索结果列表很长,实际上包含了相关和不相关的信息。手动过滤不相关信息的过程令人生畏且耗时。集群是解决这个繁琐任务的流行解决方案之一。然而,我们的文献研究表明,与英语相比,亚洲语言的文档聚类研究相对有限。而文档聚类技术在搜索引擎中的应用却很少。本文提出了一种基于单次聚类算法的搜索引擎聚类技术。为了支持目前有限的印尼语文档聚类研究,在一组印尼语新闻文档上对该技术进行了实验。对200个印度尼西亚新闻文件进行的实验产生了一些令人满意的标记类,并在一个模拟搜索引擎上展示了该算法的应用。
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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