Batch-mode Learning in Neural Networks

신경회로망에서 일괄 학습

  • 김명찬 (서울대학교 제어계측공학과) ;
  • 최종호 (서울대학교 제어계측공학과)
  • Published : 1995.03.01

Abstract

A batch-mode algorithm is proposed to increase the speed of learning in the error backpropagation algorithm with variable learning rate and variable momentum parameters in classification problems. The objective function is normalized with respect to the number of patterns and output nodes. Also the gradient of the objective function is normalized in updating the connection weights to increase the effect of its backpropagated error. The learning rate and momentum parameters are determined from a function of the gradient norm and the number of weights. The learning rate depends on the square rott of the gradient norm while the momentum parameters depend on the gradient norm. In the two typical classification problems, simulation results demonstrate the effectiveness of the proposed algorithm.

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