自适应滤波的递归hessian草图

Robin Scheibler, M. Vetterli
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引用次数: 1

摘要

递归Hessian sketch是一种新的自适应滤波算法,它基于对递归最小二乘算法解决的指数加权最小二乘问题进行速写。该算法保留了一些逆自相关矩阵的草图,并以随机间隔递归地更新它们。这些依次用于更新未知的过滤器估计。该算法的复杂度优于递推最小二乘算法。通过大量的数值实验研究了该算法的收敛性。在适当选择参数的情况下,其收敛速度介于最小均二乘和递推最小二乘自适应滤波器之间,计算量小于递推最小二乘自适应滤波器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The recursive hessian sketch for adaptive filtering
We introduce in this paper the recursive Hessian sketch, a new adaptive filtering algorithm based on sketching the same exponentially weighted least squares problem solved by the recursive least squares algorithm. The algorithm maintains a number of sketches of the inverse autocorrelation matrix and recursively updates them at random intervals. These are in turn used to update the unknown filter estimate. The complexity of the proposed algorithm compares favorably to that of recursive least squares. The convergence properties of this algorithm are studied through extensive numerical experiments. With an appropriate choice or parameters, its convergence speed falls between that of least mean squares and recursive least squares adaptive filters, with less computations than the latter.
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