Differential Evolution Training Algorithm for Feed-Forward Neural Networks

作者:Jarmo Ilonen, Joni-Kristian Kamarainen, Jouni Lampinen

摘要

An evolutionary optimization method over continuous search spaces, differential evolution, has recently been successfully applied to real world and artificial optimization problems and proposed also for neural network training. However, differential evolution has not been comprehensively studied in the context of training neural network weights, i.e., how useful is differential evolution in finding the global optimum for expense of convergence speed. In this study, differential evolution has been analyzed as a candidate global optimization method for feed-forward neural networks. In comparison to gradient based methods, differential evolution seems not to provide any distinct advantage in terms of learning rate or solution quality. Differential evolution can rather be used in validation of reached optima and in the development of regularization terms and non-conventional transfer functions that do not necessarily provide gradient information.

论文关键词:differential evolution, evolutionary algorithms, feed-forward neural network, neural network training

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论文官网地址:https://doi.org/10.1023/A:1022995128597