作者
Ali Hassani, Amir Iranmanesh, Najme Mansouri
发表日期
2021/10
期刊
Neural Computing and Applications
卷号
33
页码范围
13745-13766
出版商
Springer London
简介
Text clustering is considered one of the most important topics in modern data mining. Nevertheless, text data require tokenization which usually yields a very large and highly sparse term-document matrix, which is usually difficult to process using conventional machine learning algorithms. Methods such as latent semantic analysis have helped mitigate this issue, but are nevertheless not completely stable in practice. As a result, we propose a new feature agglomeration method based on nonnegative matrix factorization, which is employed to separate the terms into groups, and then each group’s term vectors are agglomerated into a new feature vector. Together, these feature vectors create a new feature space much more suitable for clustering. In addition, we propose a new deterministic initialization for spherical K-means, which proves very useful for this specific type of data. In order to evaluate the …
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