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Title

A k-means Clustering Algorithm based on Self-Adoptively Selecting Density Radius

Author

Yang Xinhua, Yu Kuan, Deng Wu

Citation

Vol. 6  No. 8  pp. 43-47

Abstract

K-means with its rapidity, simplicity and high scalability, has become one of the most widely used text clustering techniques. However, owing to its random selection of initial centers, unstable results were often gotten while using traditional K-means and its variants. Here a new technique of optimizing initial centers of clustering is proposed based on self-adoptively selecting density radius. The result of the experiments shows that K-means with the proposed technique can produce cluster results with high accuracy as well as stability

Keywords

Text clustering, K-means, Density radius, Self-adoptively

URL

http://paper.ijcsns.org/07_book/200608/200608A07.pdf