首页> 外文会议>2002 6th International Conference on Signal Processing Proceedings (ICSP'02) Vol.2; Aug 26-30, 2002; Beijing, China >A Fast Learning Algorithm of Feedforward Neural Networks by Using Novel Error Functions
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A Fast Learning Algorithm of Feedforward Neural Networks by Using Novel Error Functions

机译:利用新型误差函数的前馈神经网络快速学习算法

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摘要

This paper presents two novel alternative families of error functions as the generalized training criterion of feedforward neural networks, they can significantly accelerate the convergence rate in the midterm and the last training stages. Their training speed is faster than the original fast back-propagation algorithm by paramenter optimization. Several approaches to parameter optimization are explored and verified by experiments.
机译:本文提出了两个新颖的误差函数族,作为前馈神经网络的通用训练准则,它们可以显着加快中期和后期训练阶段的收敛速度。通过paramenter优化,它们的训练速度比原始的快速反向传播算法要快。实验探索和验证了几种参数优化方法。

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