Document clustering

IF 4.4 2区 数学 Q1 STATISTICS & PROBABILITY Wiley Interdisciplinary Reviews-Computational Statistics Pub Date : 2022-06-08 DOI:10.1002/wics.1588
Irene Cozzolino, M. Ferraro
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Abstract

Nowadays, the explosive growth in text data emphasizes the need for developing new and computationally efficient methods and credible theoretical support tailored for analyzing such large‐scale data. Given the vast amount of this kind of unstructured data, the majority of it is not classified, hence unsupervised learning techniques show to be useful in this field. Document clustering has proven to be an efficient tool in organizing textual documents and it has been widely applied in different areas from information retrieval to topic modeling. Before introducing the proposals of document clustering algorithms, the principal steps of the whole process, including the mathematical representation of documents and the preprocessing phase, are discussed. Then, the main clustering algorithms used for text data are critically analyzed, considering prototype‐based, graph‐based, hierarchical, and model‐based approaches.
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文档聚类
如今,文本数据的爆炸性增长强调了开发新的、计算高效的方法以及为分析此类大规模数据量身定制的可信理论支持的必要性。鉴于这类非结构化数据数量巨大,其中大多数都没有分类,因此无监督学习技术在该领域显示出了有用性。文档聚类已被证明是组织文本文档的有效工具,它已被广泛应用于从信息检索到主题建模的各个领域。在介绍文档聚类算法的建议之前,讨论了整个过程的主要步骤,包括文档的数学表示和预处理阶段。然后,考虑到基于原型、基于图、分层和基于模型的方法,对用于文本数据的主要聚类算法进行了批判性分析。
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CiteScore
6.20
自引率
0.00%
发文量
31
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