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Feature Adaptive Filtering: Exploiting Hidden Sparsity

机译:功能自适应过滤:利用隐藏的稀疏性

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We have been witnessed a growing research activity to advance new strategies to detect and exploit underlying sparsity in the parameters of physical models. In many cases, the sparsity is not explicit in the relations among the parameter coefficients requiring some suitable tools to reveal the potential sparsity. This work proposes a family of adaptive filtering algorithms, aimed at exposing some hidden features of the unknown parameters. Although the basic idea applies to any algorithm, we will concentrate the work in the LMS-type algorithms, giving rise to a family collectively named as Feature LMS (F-LMS) algorithms. These algorithms increase the convergence speed and reduce the steady-state mean-squared error, in comparison with the classical LMS solution. The main idea is to apply linear transformations, through the so-called feature matrices, to reveal the sparsity hidden in the coefficient vector, followed by a sparsity-promoting penalty function to exploit the exposed sparsity. For illustration, a few F-LMS algorithms for lowpass, bandpass, and highpass systems are introduced by using simple feature matrices that require either only simple operations or can learn the features. Simulations and real-life experiments demonstrate that the F-LMS algorithms bring about several performance improvements whenever the unknown sparsity of parameters is exposed.
机译:我们已被目睹了越来越多的研究活动,以推进新的策略,以检测和利用物理模型参数的底层稀疏性。在许多情况下,稀疏性在需要一些合适的工具以揭示潜在的稀疏性的参数系数之间的关系中不明确。这项工作提出了一种自适应滤波算法的系列,旨在暴露未知参数的一些隐藏特征。虽然基本思想适用于任何算法,但我们将专注于LMS型算法中的工作,从而引发一个集体命名为特征LMS(F-LMS)算法的家庭。与经典LMS解决方案相比,这些算法增加了收敛速度并降低了稳态平均误差。主要思想是通过所谓的特征矩阵应用线性变换,以揭示隐藏在系数矢量中隐藏的稀疏性,然后是稀疏性惩罚功能来利用暴露的稀疏性。出于说明,通过使用只需要简单操作的简单特征矩阵或者可以学习功能,引入一些用于低通,带通和高通系统的F-LMS算法。仿真和现实生活实验表明,无论只要暴露参数的未知稀疏性,F-LMS算法会带来几种性能改进。

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