基于表的20个新闻组电子文档聚类单遍算法

T. Jo, Geun-Sik Jo
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引用次数: 5

摘要

本文针对文本聚类问题,提出了一种改进的单遍聚类算法。采用传统的单遍算法将文档编码为数值向量会导致两个主要问题:维数巨大和分布稀疏。因此,为了解决这两个问题,本研究将单遍算法修改为其版本,其中文档不是被编码为数字向量,而是被编码为替代形式。在建议的版本中,将文档映射到表中,并通过相互比较两个文档的表来计算两个文档的相似性。本研究的目的是通过将单遍算法修改为专用版本来提高文本聚类的性能。
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Table Based Single Pass Algorithm for Clustering Electronic Documents in 20NewsGroups
This research proposes a modified version of single pass algorithm which is specialized for text clustering. Encoding documents into numerical vectors for using the traditional version of single pass algorithm causes the two main problems: huge dimensionality and sparse distribution. Therefore, in order to address the two problems, this research modifies the single pass algorithm into its version where documents are encoded into not numerical vectors but alternative forms. In the proposed version, documents are mapped into tables and a similarity of two documents is computed by comparing their tables with each other. The goal of this research is to improve the performance of single pass algorithm for text clustering by modifying it into the specialized version.
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