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Speed up Training of the Recurrent Neural Network Based on Constrained optimization Techniques

Speed up Training of the Recurrent Neural Network Based on Constrained optimization Techniques
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摘要 In this paper, the constrained optimization technique for a substantial prob-lem is explored, that is accelerating training the globally recurrent neural net-work. Unlike most of the previous methods in feedforward neuxal networks, the authors adopt the constrained optimization technique to improve the gradiellt-based algorithm of the globally recuxrent neural network for the adaptive learn-ing rate during training. Using the recurrent network with the improved algo-rithm, some experiments in two real-world problems, namely filtering additive noises in acoustic data and classification of temporal signals for speaker identifi-cation, have been performed. The experimental results show that the recurrent neural network with the improved learning algorithm yields significantly faster training and achieves the satisfactory performance. In this paper, the constrained optimization technique for a substantial prob-lem is explored, that is accelerating training the globally recurrent neural net-work. Unlike most of the previous methods in feedforward neuxal networks, the authors adopt the constrained optimization technique to improve the gradiellt-based algorithm of the globally recuxrent neural network for the adaptive learn-ing rate during training. Using the recurrent network with the improved algo-rithm, some experiments in two real-world problems, namely filtering additive noises in acoustic data and classification of temporal signals for speaker identifi-cation, have been performed. The experimental results show that the recurrent neural network with the improved learning algorithm yields significantly faster training and achieves the satisfactory performance.
出处 《Journal of Computer Science & Technology》 SCIE EI CSCD 1996年第6期581-588,共8页 计算机科学技术学报(英文版)
关键词 Recurrent neural network adaptive learning rate gradientbased algorithm Recurrent neural network, adaptive learning rate, gradientbased algorithm
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参考文献2

  • 1Yu Xiaobu,IEEE Trans on Neural Networkds,1995年,6卷,3期,669页
  • 2Wang Yeoufang,Proceedings of International Joint Conference on Neural Networks,1991年

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