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A Kind of Second-Order Learning Algorithm Based on Generalized Cost Criteria in Multi-Layer Feed-Forward Neural Networks

A Kind of Second-Order Learning Algorithm Based on Generalized Cost Criteria in Multi-Layer Feed-Forward Neural Networks
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摘要 A kind of second order algorithm--recursive approximate Newton algorithm was given by Karayiannis. The algorithm was simplified when it was formulated. Especially, the simplification to matrix Hessian was very reluctant, which led to the loss of valuable information and affected performance of the algorithm to certain extent. For multi layer feed forward neural networks, the second order back propagation recursive algorithm based generalized cost criteria was proposed. It is proved that it is equivalent to Newton recursive algorithm and has a second order convergent rate. The performance and application prospect are analyzed. Lots of simulation experiments indicate that the calculation of the new algorithm is almost equivalent to the recursive least square multiple algorithm. The algorithm and selection of networks parameters are significant and the performance is more excellent than BP algorithm and the second order learning algorithm that was given by Karayiannis. A kind of second order algorithm--recursive approximate Newton algorithm was given by Karayiannis. The algorithm was simplified when it was formulated. Especially, the simplification to matrix Hessian was very reluctant, which led to the loss of valuable information and affected performance of the algorithm to certain extent. For multi layer feed forward neural networks, the second order back propagation recursive algorithm based generalized cost criteria was proposed. It is proved that it is equivalent to Newton recursive algorithm and has a second order convergent rate. The performance and application prospect are analyzed. Lots of simulation experiments indicate that the calculation of the new algorithm is almost equivalent to the recursive least square multiple algorithm. The algorithm and selection of networks parameters are significant and the performance is more excellent than BP algorithm and the second order learning algorithm that was given by Karayiannis.
出处 《Journal of Beijing Institute of Technology》 EI CAS 2003年第2期119-124,共6页 北京理工大学学报(英文版)
基金 SponsoredbytheMinisterialLevelFoundation
关键词 多层前馈神经网络 BP算法 二次学习算法 牛顿递归算法 multi layer feed forward neural networks BP algorithm Newton recursive algorithm
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参考文献8

  • 1Judisky A,Hjalmarson H,Benveniste A,et al.Nonlinear black-box modeling in system identification: A unified overview[].Automatica.1995
  • 2Huang Deshuang.System theory of pattern recognition in neural networks[]..1996
  • 3Kasparian V,Batur C,Zhang H,et al.Davidon least squares-based learning algorithm for feedforward neural networks[].Neural Networks.1994
  • 4Karayiannis N B,Venetsanopoulost A N.Artificial neural networks, learning algorithms, performance evaluation and applications[]..1993
  • 5Avriel M.Nonlinear programming analysis and methods[]..1976
  • 6Fang Chongzhi,Xiao Deyun.Process idenfication[]..1998
  • 7Yang Jiangang.Applied tutorial of artificial neural networks[]..2001
  • 8Xi Shaolin,Zhao Fengzhi.Calculation methods in optimization[]..1983

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