Research on Optimization Method of Extreme Learning Machine with Application of Information Technology

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Abstract:

Based on the research of extreme learning machine and support vector machine, this paper does the research on the optimization method on extreme learning machine. This paper suggests an optimization model of extreme learning machine based on the improvement of the old model, and this model has obvious improvement on generalization ability and learning parameter ability. This approach can improve the development efficiency in the information technology, the experiment indicate this approach is efficient.

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23-27

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December 2013

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© 2014 Trans Tech Publications Ltd. All Rights Reserved

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