An Improved Clustering Algorithm for Text Mining: Multi-Cluster Spherical K-Means

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Zarqa University

Erişim Hakkı

info:eu-repo/semantics/embargoedAccess

Özet

Thanks to advances in information and communication technologies, there is a prominent increase in the amount of information produced specifically in the form of text documents. In order to, effectively deal with this “information explosion” problem and utilize the huge amount of text databases, efficient and scalable tools and techniques are indispensable. In this study, text clustering which is one of the most important techniques of text mining that aims at extracting useful information by processing data in textual form is addressed. An improved variant of spherical K-Means (SKM) algorithm named multi-cluster SKM is developed for clustering high dimensional document collections with high performance and efficiency. Experiments were performed on several document data sets and it is shown that the new algorithm provides significant increase in clustering quality without causing considerable difference in CPU time usage when compared to SKM algorithm.

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Data Mining, Text Mining, Document Clustering, SKM

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The International Arab Journal of Information Technology

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13

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1

Künye

TUNALI, Volkan, Turgay BİLGİN & Ali Yılmaz ÇAMURCU."An Improved Clustering Algorithm for Text Mining: Multi-Cluster Spherical K-Means". The International Arab Journal of Information Technology, 13.1 (2016): 12-19.

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