A Classification Approach Based on Evolutionary Neural Networks
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    Abstract:

    Classification is important in data mining and machine learning. In this paper, a classification approach based on evolutionary neural networks (CABEN) is presented, which establishes classifiers by a group of three-layer feed-forward neural networks. The neural networks are trained by an improving algorithm synthesizing modified Evolutionary Strategy and Levenberg-Marquardt optimization method. The class label of the identifying data can first be evaluated by each neural network, and the final classification result is obtained according to the absolute-majority-voting rule. Experimental results show that the algorithm CABEN is effective for the classification, and has the better performance in classification precision, stability and fault-tolerance comparing with the traditional neural network methods, Bayesian classifiers and decision trees, especially for the complex classification problems with many classes.

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商琳,王金根,姚望舒,陈世福.一种基于多进化神经网络的分类方法.软件学报,2005,16(9):1577-1583

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  • Received:August 12,2004
  • Revised:February 04,2005
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