Normal Parameter Reduction in Soft Set Based on Harmony Search Algorithm

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The normal parameter reduction in soft set is difficult to application in data mining because of great calculation quantity. In this paper, the intelligent optimization algorithm, the harmony search algorithm, is applied to solve the problem. The normal parameter reduction model is constructed and the harmony search algorithm is designed. Experience has shown that the method is feasible and fast..

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2173-2176

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September 2014

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© 2014 Trans Tech Publications Ltd. All Rights Reserved

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