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计算机应用研究 2011
Selective SVM ensemble based on accelerating genetic algorithm
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Abstract:
This paper presented selective SVM ensemble based on accelerating genetic algorithm to improve the generalization ability of SVM.Produced many SVM by Bootstrap methods,established the fitness function based on negative correlation learning to improve generalization and high dissimilarity with others.Calculated the weighte of SVM by accelerating genetic algorithm, then ensembled those SVMs with weight larger than a given threshold value using weights average. Experiments results show that the algorithm is an effect ensemble method and improves the ensemble efficiency and generalization ability of SVM.