二次剪枝辅助贝努利多项式型WASD神经网络及其鲁棒分类扩展

Yunong Zhang, Dechao Chen, Long Jin, Y. Wang, Feiheng Luo
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引用次数: 5

摘要

基于函数逼近理论,提出了一种新的多输入伯努利多项式神经网络(MIBPN)。MIBPN采用二次剪枝(TP)加权和结构确定(WASD)算法进行训练。WASD算法可以获得MIBPN的最优权值和结构,克服了传统BP(反向传播)神经网络训练速度慢和局部极小的缺点。使用TP技术,在MIBPN中不太重要的神经元被修剪以降低计算复杂度。此外,该MIMOBPN可以扩展为多输入多输出的伯努利多项式神经网络(MIMOBPN),可以作为分类的重要工具。数值实验结果表明,该算法在数据逼近和泛化方面具有优异的性能。此外,基于现实世界分类数据集的实验结果证实了采用本文提出的WASD算法进行分类的MIMOBPN具有较高的准确率和较强的鲁棒性。最后,建立了MIBPN和MIMOBPN两种形式的伯努利多项式型二次剪枝辅助WASD神经元,并对其进行了鲁棒分类的有效扩展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Twice-Pruning Aided WASD Neuronet of Bernoulli-Polynomial Type with Extension to Robust Classification
This paper proposes a novel multi-input Bernoulli-polynomial neuronet (MIBPN) on the basis of function approximation theory. The MIBPN is trained by a weights-and-structure-determination (WASD) algorithm with twice pruning (TP). The WASD algorithm can obtain the optimal weights and structure for the MIBPN, and overcome the weaknesses of conventional BP (back-propagation) neuronets such as slow training speed and local minima. With the TP technique, the neurons of less importance in the MIBPN are pruned for less computational complexity. Furthermore, this MIBPN can be extended to a multiple input multiple output Bernoulli-polynomial neuronet (MIMOBPN), which can be applied as an important tool for classification. Numerical experiment results show that the MIBPN has outstanding performance in data approximation and generalization. Besides, experiment results based on the real-world classification data-sets substantiate the high accuracy and strong robustness of the MIMOBPN equipped with the proposed WASD algorithm for classification. Finally, the twice-pruning aided WASD neuronet of Bernoulli-polynomial type in the forms of MIBPN and MIMOBPN is established, together with the effective extension to robust classification.
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