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Mercer Kernel Based Fuzzy Clustering Self-Adaptive Algorithm

Mercer Kernel Based Fuzzy Clustering Self-Adaptive Algorithm
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摘要 A novel mercer kernel based fuzzy clustering self-adaptive algorithm is presented. The mercer kernel method is introduced to the fuzzy c-means clustering. It may map implicitly the input data into the high-dimensional feature space through the nonlinear transformation. Among other fuzzy c-means and its variants, the number of clusters is first determined. A self-adaptive algorithm is proposed. The number of clusters, which is not given in advance, can be gotten automatically by a validity measure function. Finally, experiments are given to show better performance with the method of kernel based fuzzy c-means self-adaptive algorithm. A novel mercer kernel based fuzzy clustering self-adaptive algorithm is presented. The mercer kernel method is introduced to the fuzzy c-means clustering. It may map implicitly the input data into the high-dimensional feature space through the nonlinear transformation. Among other fuzzy c-means and its variants, the number of clusters is first determined. A self-adaptive algorithm is proposed. The number of clusters, which is not given in advance, can be gotten automatically by a validity measure function. Finally, experiments are given to show better performance with the method of kernel based fuzzy c-means self-adaptive algorithm.
作者 李侃 刘玉树
出处 《Journal of Beijing Institute of Technology》 EI CAS 2004年第4期351-354,共4页 北京理工大学学报(英文版)
基金 SponsoredbytheMinisterialLevelAdvancedResearchFoundation(4 0 1 0 5 0 3)
关键词 fuzzy c-means mercer kernel feature space validity measure function fuzzy c-means mercer kernel feature space validity measure function
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参考文献6

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