On the comparisons between two outer-supervised learning algorithms for finding the inversion of arbitrary nonsingular matrix

De-shuang Huang, Haiyan Hu, Xiaofeng Wang
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Abstract

This paper discusses using two kinds of outer-supervised learning algorithms, i.e., the constrained learning algorithm and recursive least squares algorithm, for finding the inversion of arbitrary nonsingular matrix (including the complex ones). We present the details of two kinds of outer-supervised learning algorithms respectively in this paper, and how to use them based on linear feedforward neural networks for finding the inversion of the arbitrary nonsingular matrix. Finally, to compare the corresponding performance for two learning methods, several simulation results are reported and discussed.
任意非奇异矩阵求逆的两种外监督学习算法的比较
本文讨论了用约束学习算法和递推最小二乘算法两种外监督学习算法求解任意非奇异矩阵(包括复矩阵)的反演问题。本文详细介绍了两种基于线性前馈神经网络的外监督学习算法,以及如何利用它们求任意非奇异矩阵的逆。最后,为了比较两种学习方法的相应性能,报告并讨论了几个仿真结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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