Super-Linearly Convergent BP Learning Algorithm for Feedforward Neural Networks
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    Abstract:

    In this paper, some shortages of traditional BP learning algorithm are analyzed. To avoid these shortages, a modified BP learning algorithm is proposed. It is s hown that this algorithm is super-linearly convergent under certain conditions. This algorithm can overcome some shortages of traditional BP learning algorithm , and has the same order of computation complexity as the traditional BP algorit hm. Finally, two computing examples are given. Simulation results illustrate tha t this algorithm is highly effective and practicable.

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梁久祯,何新贵,黄德双.前馈网络的一种超线性收敛BP学习算法.软件学报,2000,11(8):1094-1096

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History
  • Received:January 11,1999
  • Revised:August 27,1999
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