Clustering Analysis Method based on Fuzzy C-Means Algorithm of PSO and PPSO with Application in Image Data

نویسندگان

  • JENG-MING YIH
  • YUAN-HORNG LIN
  • HSIANG-CHUAN LIU
چکیده

The popular fuzzy c-means algorithm (FCM) converges to a local minimum of the objective function. Hence, different initializations may lead to different results. The important issue is how to avoid getting a bad local minimum value to improve the cluster accuracy. The particle swarm optimization (PSO) is a popular and robust strategy for optimization problems. But the main difficulty in applying PSO to real-world applications is that PSO usually need a large number of fitness evaluations before a satisfying result can be obtained. In this paper, the improved new algorithm, “Fuzzy C-Mean based on Picard iteration and PSO (PPSO-FCM)”, is proposed. Two real data sets were applied to prove that the performance of the PPSO-FCM algorithm is better than the conventional FCM algorithm and the PSO-FCM algorithm. Key-Words: FCM, Picard iteration, PSO algorithms, PPSO-FCM algorithm.

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تاریخ انتشار 2008