Comparison of semantic and single term similarity measures for clustering turkish documents

Bülent Yücesoy, Ş. Öğüdücü
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引用次数: 3

Abstract

With the rapid growth of the World Wide Web (www), it becomes a critical issue to design and organize the vast amounts of on-line documents on the web according to their topic. Even for the search engines it is very important to group similar documents in order to improve their performance when a query is submitted to the system. Clustering is useful for taxonomy design and similarity search of documents on such a domain. Similarity is fundamental to many clustering applications on hypertext. In this paper, we will study how measures of similarity are used to cluster a collection of documents on a web site. Most of the document clustering techniques rely on single term analysis of text, such as vector space model. To better group of related documents we propose a new semantic similarity measure. We compare our measure with Wu-Palmer similarity and cosine similarity. Experimental results show that cosine similarity perform better than the semantic similarities. We demonstrate our results on Turkish documents. This is a first study that considers the semantic similarities between Turkish documents.
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聚类土耳其语文档的语义和单术语相似度度量的比较
随着万维网(World Wide Web)的迅速发展,如何对网络上大量的在线文档进行主题化设计和组织已成为一个重要的问题。即使对于搜索引擎来说,将相似的文档分组也是非常重要的,以便在向系统提交查询时提高它们的性能。聚类对于该领域文档的分类设计和相似度搜索非常有用。相似性是许多超文本聚类应用程序的基础。在本文中,我们将研究如何使用相似性度量来对网站上的文档集合进行聚类。大多数文档聚类技术依赖于文本的单词分析,如向量空间模型。为了更好地对相关文档进行分类,我们提出了一种新的语义相似度度量方法。我们将我们的测度与Wu-Palmer相似度和余弦相似度进行了比较。实验结果表明,余弦相似度优于语义相似度。我们在土耳其文件上展示了我们的结果。这是第一个考虑土耳其文献之间语义相似性的研究。
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