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Weight Initialization Possibilities for Feedforward Neural Network with Linear Saturated Activation Functions

机译:具有线性饱和激活功能的前馈神经网络的重量初始化可能性

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Initial weight choice is an important aspect of the training mechanism for feedforward neural networks. This paper deals with a particular topology of a feedforward neural network, where symmetric linear saturated activation functions are used in a hidden layer. Training of such a topology is a tricky procedure, since the activation functions are not fully differentiable. Thus, a proper initialization method for that case is even more important, than dealing with neural networks with sigmoid activation functions. Therefore, several initialization possibilities are examined and tested here. As a result, particular initialization methods are recommended for application, according to the class of the task to be solved.
机译:初始重量选择是前馈神经网络训练机制的一个重要方面。本文涉及前馈神经网络的特定拓扑,其中对称线性饱和激活功能用于隐藏层。这种拓扑的训练是一种棘手的过程,因为激活功能没有完全可分辨。因此,对于该案例的适当初始化方法比处理具有SIGMOID激活功能的神经网络更重要。因此,在此检查并测试几种初始化可能性。因此,根据要解决的任务的类,建议使用特定的初始化方法来应用。

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