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2種改進的神經網絡結構學習算法

Two Improved Study Algorithms for Neural Network Structure

  • 摘要: 針對已提出的靈敏度計算和自構形2種神經網絡結構學習算法,提出2種改進的算法.實驗證明改進的算法比原算法有更好的泛化能力.

     

    Abstract: Based on the two Neural Network Study algorithim; Sensitivity Calculation and Self Constructing, two improved algorithm are proposed, which are proved to be better than the original algorithms by the experiments.

     

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