A WordNet-Based Semantic Model for Enhancing Text Clustering

Shady Shehata
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引用次数: 36

Abstract

Most of text mining techniques are based on word and/or phrase analysis of the text. The statistical analysis of a term (word or phrase) frequency captures the importance of the term within a document. However, to achieve a more accurate analysis, the underlying mining technique should indicate terms that capture the semantics of the text from which the importance of a term in a sentence and in the document can be derived. Incorporating semantic features from the WordNet lexical database is one of many approaches that have been tried to improve the accuracy of text clustering techniques. A new semantic-based model that analyzes documents based on their meaning is introduced. The proposed model analyzes terms and their corresponding synonyms and/or hypernyms on the sentence and document levels. In this model, if two documents contain different words and these words are semantically related, the proposed model can measure the semantic-based similarity between the two documents. The similarity between documents relies on a new semantic-based similarity measure which is applied to the matching concepts between documents. Experiments using the proposed semantic-based model in text clustering are conducted. Experimental results demonstrate that the newly developed semantic-based model enhances the clustering quality of sets of documents substantially.
基于wordnet的增强文本聚类的语义模型
大多数文本挖掘技术都是基于文本的单词和/或短语分析。术语(单词或短语)频率的统计分析捕获了该术语在文档中的重要性。然而,为了实现更准确的分析,底层挖掘技术应该指出捕获文本语义的术语,从这些语义中可以推导出一个术语在句子和文档中的重要性。结合WordNet词汇数据库的语义特征是提高文本聚类技术准确性的众多方法之一。介绍了一种基于语义的文档分析模型。提出的模型在句子和文档级别上分析术语及其相应的同义词和/或上义词。在该模型中,如果两个文档包含不同的单词,并且这些单词在语义上是相关的,则该模型可以度量两个文档之间基于语义的相似度。文档之间的相似度依赖于一种新的基于语义的相似度度量,该度量应用于文档之间的匹配概念。将本文提出的基于语义的聚类模型应用于文本聚类实验。实验结果表明,新开发的基于语义的模型大大提高了文档集的聚类质量。
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