动力系统稳定性的主成分分析与次要成分分析

M. Hasan
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引用次数: 1

摘要

从信号中提取主成分或次成分的算法广泛应用于信号处理和控制领域。本文探讨了生成学习规则的新框架,用于迭代计算给定矩阵的主分量和次分量(或子空间)。利用Lyapunov理论和La Salle不变性原理进行稳定性分析,确定这些学习规则的吸引区域。在许多推导中,具体地证明了Oja规则及其许多变体是渐近全局稳定的。李雅普诺夫稳定性理论也适用于加权学习规则。所提出的MCA/PCA学习规则的一些基本特征是它们是自归一化的,可以应用于非对称矩阵。给出了一些非线性动力系统的精确解
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Stability analysis of dynamical systems for minor and principal component analysis
Algorithms that extract the principal or minor components of a signal are widely used in signal processing and control applications. This paper explores new frameworks for generating learning rules for iteratively computing the principal and minor components (or subspaces) of a given matrix. Stability analysis using Lyapunov theory and La Salle invariance principle is provided to determine regions of attraction of these learning rules. Among many derivations, it is specifically shown that Oja's rule and many variations of it are asymptotically globally stable. Lyapunov stability theory is also applied to weighted learning rules. Some of the essential features for the proposed MCA/PCA learning rules are that they are self normalized and can be applied to non-symmetric matrices. Exact solutions for some nonlinear dynamical systems are also provided
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