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Adaptive algorithms with nonlinear data and error functions

机译:具有非线性数据和误差函数的自适应算法

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The tools of nonlinear system theory are used to examine several common nonlinear variants of the LMS algorithm and derive a persistence of excitation criterion for local exponential stability. The condition is tight when the inputs are periodic, and a generic counterexample is demonstrated which gives (local) instability for a large class of such nonlinear versions of LMS, specifically, those which utilize a nonlinear data function. The presence of a nonlinear error function is found to be relatively benign in that it does not affect the stability of the error system. Rather, it defines the cost function the algorithm tends to minimize. Specific examples include the dead zone modification, the cubed data nonlinearity, the cubed error nonlinearity, the signed regressor algorithm, and a single-layer version of the backpropagation algorithm.
机译:非线性系统理论的工具用于检查LMS算法的几种常见非线性变体,并得出局部指数稳定性的激励准则的持久性。当输入为周期性时,条件很严格,并演示了一个通用的反例,它为大量此类LMS非线性版本(特别是那些利用非线性数据函数的非线性版本)提供(局部)不稳定性。发现非线性误差函数的存在是相对良性的,因为它不影响误差系统的稳定性。相反,它定义了算法趋于最小化的成本函数。具体示例包括盲区修改,立方数据非线性,立方误差非线性,有符号回归算法以及反向传播算法的单层版本。

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