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Boundedness and convergence of batch back-propagation algorithm with penalty for feedforward neural networks

机译:前馈神经网络的带惩罚的批处理反向传播算法的有界性和收敛性

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摘要

This paper investigates the batch back-propagation algorithm with penalty for training feedforward neural networks. A usual penalty is considered, which is a term proportional to the norm of the weights. The learning rate is set to be a small constant or an adaptive series. The main contribution of this paper is to theoretically prove the boundedness of the weights in the network training process. This boundedness is then used to prove some convergence results of the algorithm, which cover both the weak and strong convergence. Simulation results are given to support the theoretical findings.
机译:本文研究了用于惩罚前馈神经网络的带惩罚的批量反向传播算法。考虑通常的罚款,这是一个与权数的标准成正比的术语。将学习率设置为较小的常数或自适应序列。本文的主要贡献是从理论上证明了网络训练过程中权重的有界性。然后,该有界性用于证明算法的一些收敛结果,该结果涵盖了弱收敛和强收敛。仿真结果给出了理论上的支持。

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