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A new approach to improving generalization ability of feed-foward neural networks

机译:一种提高饲料馈通神经网络泛化能力的新方法

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In order to improve the generalization ability of feed-forward neural networks, a new objective function of learning procedure for training single hidden layer network is proposed. This objective function is composed of two information entropy, one is the cross entropy as the main optimization term and the other is the fuzzy entropy as the regularization term. In this paper, we are fused the concept of entropy to the network training process by the regularization method. We also derive the new learning rule of neural network. Our experimental results show that the generalization ability of networks by the proposed algorithm is better than other well-known learning methods in the same time complexity.
机译:为了提高前馈神经网络的泛化能力,提出了用于训练单个隐藏层网络的学习过程的新客观函数。该目标函数由两个信息熵组成,一个是作为主要优化项的跨熵,另一个是主要优化项,另一个是模糊熵作为正则化术语。在本文中,我们通过正规化方法融合了熵的概念到网络培训过程。我们还获得了神经网络的新学习规则。我们的实验结果表明,通过所提出的算法的网络泛化能力优于同时复杂性的其他众所周知的学习方法。

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