Exponential Probability Clustering

  • Yuxi, Hou (School of Electrical Engineering and Computer Science KAIST) ;
  • Park, Cheol-Hoon (School of Electrical Engineering and Computer Science KAIST)
  • 발행 : 2008.06.18

초록

K-means is a popular one in clustering algorithms, and it minimizes the mutual euclidean distance among the sample points. But K-means has some demerits, such as depending on initial condition, unsupervised learning and local optimum. However mahalanobis distancecan deal this case well. In this paper, the author proposed a new clustering algorithm, named exponential probability clustering, which applied Mahalanobis distance into K-means clustering. This new clustering does possess not only the probability interpretation, but also clustering merits. Finally, the simulation results also demonstrate its good performance compared to K-means algorithm.

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