Research on Parameters Optimization Algorithm in Support Vector Machine Based on Immune Memory Clone Strategy

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Abstract:

The performance of support vector machine (SVM) depends on the selection of model parameters, however, the selection of SVM model parameters more depends on the empirical value. According to the above deficiency, this paper proposed a parameters optimization method of support vector machine based on immune memory clone strategy (IMC). This method can solve the multi-peak model parameters selection problem better which is introduced by n-folded cross-verification and automatic acquire the optimum model parameters. Proved by the simulation results on standard data, this method has higher precision and faster optimization speed. In a word, it can be used as an effective and feasible SVM parameters optimization method.

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1618-1621

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December 2012

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© 2013 Trans Tech Publications Ltd. All Rights Reserved

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