Alternative c-means clustering algorithms

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In this paper we propose a new metric to replace the Euclidean norm in c-means clustering procedures. On the basis of the robust statistic and the influence function, we claim that the proposed new metric is more robust than the Euclidean norm. We then create two new clustering methods called the alternative hard c-means (AHCM) and alternative fuzzy c-means (AFCM) clustering algorithms. These alternative types of c-means clustering have more robustness than c-means clustering. Numerical results show that AHCM has better performance than HCM and AFCM is better than FCM. We recommend AFCM for use in cluster analysis. Recently, this AFCM algorithm has successfully been used in segmenting the magnetic resonance image of Ophthalmology to differentiate the abnormal tissues from the normal tissues.

论文关键词:Hard c-means,Fuzzy c-means,Alternative c-means,Fixed-point iterations,Robustness,Noise

论文评审过程:Received 23 October 2000, Revised 2 October 2001, Available online 29 November 2001.

论文官网地址:https://doi.org/10.1016/S0031-3203(01)00197-2