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计算机系统应用英文版:2010,19(3):171-174
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减聚类的模糊C-均值算法在文本分类中的应用
(辽宁工程技术大学 辽宁 葫芦岛 125105)
Application of Subtractive Clustering’s Fuzzy C-Means Categorization to Text Categorization
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Received:June 30, 2009    
中文摘要: 首先,选择合适的文本集合,并且对文本进行分词处理,然后,进行文档内部特征词的提取,通过采用词频统计的方法对文本向量进行降维处理,从而选择最佳的特征向量。最后,将非数值的文本数据进行量化处理后,利用减聚类优化的模糊C-均值算法对文本集合进行聚类,从而提高文本聚类的效果。
中文关键词: 模糊聚类  文本分类  特征选取  VSM  减聚类
Abstract:In this paper, fuzzy C-means categorization optimized by Subtractive clustering is applied to text clustering. First of all, the paper chooses a suitable text collection and deals with word segmentation of the text. Then, it extracts the internal idiocratic words of the documents, and uses word frequency statistics for the text dimensionality reduction processing, to choose the best eigenvector. Finally, after quantifying the text of the non-numerical data, it clusters the collections of text with fuzzy C-means algorithm which is optimized by Subtractive clustering, so as to enhance the effectiveness of text clustering.
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王月,柴瑞敏.减聚类的模糊C-均值算法在文本分类中的应用.计算机系统应用,2010,19(3):171-174
WANG Yue,CHAI Rui-Min.Application of Subtractive Clustering’s Fuzzy C-Means Categorization to Text Categorization.COMPUTER SYSTEMS APPLICATIONS,2010,19(3):171-174