首页> 外文会议>Intelligence in Neural and Biological Systems, 1995. INBS'95, Proceedings., First International Symposium on >Hybrid nets with variable parameters: a novel approach to fast learning under backpropagation
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Hybrid nets with variable parameters: a novel approach to fast learning under backpropagation

机译:具有可变参数的混合网络:反向传播下的快速学习新方法

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This paper presents a novel approach under regular backpropagation. We introduce hybrid neural nets that have different activation functions for different layers in fully connected feed forward neural nets. We change the parameters of activation functions in hidden layers and output layer to accelerate the learning speed and to reduce the oscillation respectively. Results on the two-spirals benchmark are presented which are better than any results under backpropagation feed forward nets using monotone activation functions published previously.
机译:本文提出了一种在常规反向传播下的新颖方法。我们在完全连接的前馈神经网络中引入了对不同层具有不同激活功能的混合神经网络。我们分别在隐藏层和输出层中更改激活函数的参数,以加快学习速度并减少振荡。给出了双螺旋基准的结果,该结果优于使用先前发布的单调激活函数进行反向传播前馈网络下的任何结果。

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