Title :
Automatic Clustering Using an Improved Differential Evolution Algorithm
Author :
Das, Swagatam ; Abraham, Ajith ; Konar, Amit
Author_Institution :
Jadavpur Univ., Kolkata
Abstract :
Differential evolution (DE) has emerged as one of the fast, robust, and efficient global search heuristics of current interest. This paper describes an application of DE to the automatic clustering of large unlabeled data sets. In contrast to most of the existing clustering techniques, the proposed algorithm requires no prior knowledge of the data to be classified. Rather, it determines the optimal number of partitions of the data "on the run." Superiority of the new method is demonstrated by comparing it with two recently developed partitional clustering techniques and one popular hierarchical clustering algorithm. The partitional clustering algorithms are based on two powerful well-known optimization algorithms, namely the genetic algorithm and the particle swarm optimization. An interesting real-world application of the proposed method to automatic segmentation of images is also reported.
Keywords :
genetic algorithms; image classification; image segmentation; particle swarm optimisation; pattern clustering; search problems; automatic image segmentation; data classification; differential evolution algorithm; genetic algorithm; global search heuristics; hierarchical clustering algorithm; optimization algorithms; particle swarm optimization; partitional clustering techniques; unlabeled data sets; Clustering algorithms; Councils; Evolution (biology); Genetic algorithms; Image analysis; Image segmentation; Particle swarm optimization; Partitioning algorithms; Pattern analysis; Robustness; Differential evolution (DE); genetic algorithms (GAs); particle swarm optimization (PSO); partitional clustering;
Journal_Title :
Systems, Man and Cybernetics, Part A: Systems and Humans, IEEE Transactions on
DOI :
10.1109/TSMCA.2007.909595