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通过在线梯度算法训练pi-sigma网络,并对小权重更新进行惩罚。

Training pi-sigma network by online gradient algorithm with penalty for small weight update.

作者信息

Xiong Yan, Wu Wei, Kang Xidai, Zhang Chao

机构信息

Department of Applied Mathematics, Dalian University of Technology, Dalian 116024, People's Republic of China.

出版信息

Neural Comput. 2007 Dec;19(12):3356-68. doi: 10.1162/neco.2007.19.12.3356.

Abstract

A pi-sigma network is a class of feedforward neural networks with product units in the output layer. An online gradient algorithm is the simplest and most often used training method for feedforward neural networks. But there arises a problem when the online gradient algorithm is used for pi-sigma networks in that the update increment of the weights may become very small, especially early in training, resulting in a very slow convergence. To overcome this difficulty, we introduce an adaptive penalty term into the error function, so as to increase the magnitude of the update increment of the weights when it is too small. This strategy brings about faster convergence as shown by the numerical experiments carried out in this letter.

摘要

π-σ网络是一类输出层带有积单元的前馈神经网络。在线梯度算法是前馈神经网络最简单且最常用的训练方法。但是,当将在线梯度算法用于π-σ网络时会出现一个问题,即权重的更新增量可能会变得非常小,尤其是在训练初期,这会导致收敛非常缓慢。为了克服这一困难,我们在误差函数中引入了一个自适应惩罚项,以便在权重更新增量过小时增大其幅度。如本信中所进行的数值实验所示,该策略带来了更快的收敛。

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