基于新颖性的在线文档增量聚类

Sophoin Khy, Y. Ishikawa, H. Kitagawa
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引用次数: 12

摘要

文档聚类已成为管理海量数据和提供所需信息的核心技术。在网络环境中,新信息通常比旧信息更有吸引力。传统的聚类侧重于通过对每个文档赋予相同的权重来将相似的文档分组到簇中。我们提出了一种基于新颖性的增量聚类方法,用于对最近的文档有偏差的在线文档。在聚类方法中,将“新颖性”的概念纳入到相似函数中,并提出了一种聚类方法,即K-means方法的变体。通过实验验证了该方法的有效性和性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Novelty-based Incremental Document Clustering for On-line Documents
Document clustering has been used as a core technique in managing vast amount of data and providing needed information. In on-line environments, generally new information gains more interests than old one. Traditional clustering focuses on grouping similar documents into clusters by treating each document with equal weight. We proposed a novelty-based incremental clustering method for on-line documents that has biases on recent documents. In the clustering method, the notion of ‘novelty’ is incorporated into a similarity function and a clustering method, a variant of the K-means method, is proposed. We examine the efficiency and behaviors of the method by experiments.
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