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面向匹配決策問題的漏整合神經元稀疏ESN網絡

Sparse ESN with a leaky integrator for matching decision-making problems

  • 摘要: 為了對匹配決策問題進行建模與預測,提出了一種具有更多神經生理學特征的稀疏回聲狀態網絡(ESN),并基于在線監督學習方法對網絡進行訓練.為了評估網絡的匹配決策性能,設計了三組測試數據集對網絡性能進行測試,并提出了一種基于網絡期望輸出與實際輸出序列最大相關系數的評價方法.仿真結果表明,新模型只需要較少的訓練時間即可獲得較好的決策性能,且對發放時間間隔、平移和網絡噪聲具有較好的魯棒性.

     

    Abstract: A new sparse echo state network (ESN) with a leaky integrator, which is expected to has more neurophysiology characteristics, was proposed and trained using the online supervised learning method so as to make the modeling and prediction of the matching decision-making problem. To evaluate the matching decision-making performance of the network, three kinds of test datasets were set up and an estimation method based on the maximum correlation coefficient for the actual output and the desired one was present. Simulation experimental results show that the proposed model can achieve a better decision-making performance with a less training time. Meanwhile the model has a better robustness on spiking interval change, shifting, and network noise.

     

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