In order to improve text clustering performance, this paper proposes a text clustering method based on word hyperclique. It evaluates document similarity with word relationship between documents, works with word hyperclique as assistance of the document's vector and uses a corresponding clustering algorithm by graph to partition the document sets. Experimental results validate the effectiveness of the algorithm for improving clustering performance.%为优化文本聚类效果,提出一种基于单词超团理论的文本聚类方法.利用文档中单词的关联模式来评估文档间的相似度,将单词超团作为文档向量辅助信息,以图划分的方式进行聚类分析.对不同聚类方法的结果进行比较,证明基于单词超团的文本聚类方法能提高文本聚类的准确性.
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