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Improved constrained learning algorithms by incorporating additional functional constraints into neural networks

机译:通过将其他功能约束纳入神经网络来改进约束学习算法

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摘要

In this paper, two improved constrained learning algorithms that arc able to guarantee to obtain better generalization performance are proposed. These two algorithms are substantially on-line learning ones. The cost term for the additional functionality of the first improved algorithm is selected based on the first-order derivatives of the neural activation at hidden layers, while the one of the second improved algorithm is selected based on second-order derivatives of the neural activation at hidden layers and output layer. In the course of training, the cost terms selected from these additional cost functions can penalize the input-to-output mapping sensitivity or high-frequency components included in training data. Finally, theoretical justifications and simulation results are given to verify the efficiency and effectiveness of the two proposed learning algorithms. (c) 2005 Elsevier Inc. All rights reserved.
机译:本文提出了两种改进的约束学习算法,它们可以保证获得更好的泛化性能。这两种算法实质上是在线学习算法。基于隐藏层神经激活的一阶导数选择第一改进算法的附加功能的成本项,而基于隐藏层神经激活的二阶导数选择第二改进算法中的一个。隐藏层和输出层。在训练过程中,从这些附加成本函数中选择的成本术语可能会影响训练数据中包含的输入到输出映射灵敏度或高频分量。最后,给出理论依据和仿真结果,以验证所提出的两种学习算法的效率和有效性。 (c)2005 Elsevier Inc.保留所有权利。

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