基于分布式名词属性首次出现的文本文档聚类

S. Vijayalakshmi, D. Manimegalai
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引用次数: 0

摘要

属性的选择对提高聚类质量起着至关重要的作用。我们对三种属性选择技术进行了比较研究,揭示了未经尝试的组合,并为选择属性提供了指导。它偶尔在无监督学习中被研究;然而,它在监督学习中得到了广泛的探索。该框架主要关注关键分布名词属性的确定和选择问题,在没有类别信息的情况下,根据原始名词属性的重要性度量分数对属性进行排序,从而提名关键分布名词属性。在reuters、20 Newsgroup、WebKB和SCJC (Specific Crime Judgment Corpus)数据集上的实验结果表明,上下文中不同分数的算法能够识别出重要属性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Distributed noun attribute based on its first appearance for text document clustering
Selection of attributes plays a vital role to improve the quality of clustering. We present a comparative study on three attribute selection techniques and it reveals unattempt combinations, and provides guidelines in selecting attributes. It is occasionally studied in unsupervised learning; however it has been extensively explored in supervised learning. The suggested framework is primarily concerned with the problem of determining and selecting key distributional noun attributes, which are nominated by ranking the attributes according to the importance measure scores from the original noun attributes without class information. Experimental results on Reuter, 20 Newsgroup, WebKB and SCJC (Specific Crime Judgment Corpus) datasets indicate that algorithm with different scores in the context are able to identify the important attributes.
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