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Set-theoretic adaptive filtering based on data-driven sparsification

机译:基于数据驱动的稀疏化的集理论自适应滤波

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In this article, we propose a fast and efficient algorithm named the adaptive parallel Krylov-metric projection algorithm. The proposed algorithm is derived from the variable-metric adaptive projected subgradient method, which has recently been presented as a unified analytic tool for various adaptive filtering algorithms. The proposed algorithm features parallel projection—in a variable-metric sense—onto multiple closed convex sets containing the optimal filter with high probability. The metric is designed based on (i) sparsification by means of a certain data-dependent Krylov subspace and (ii) maximal use of the obtained sparse structure for fast convergence. The numerical examples show the advantages of the proposed algorithm over the existing ones in stationaryonstationary environments.
机译:在本文中,我们提出了一种快速有效的算法,称为自适应并行Krylov度量投影算法。所提出的算法是从可变度量自适应投影次梯度方法派生而来的,该方法最近已被提出作为用于各种自适应滤波算法的统一分析工具。所提出的算法具有在可变度量意义上的并行投影到包含高概率最优滤波器的多个闭合凸集上的特征。该度量标准是基于(i)通过某种依赖数据的Krylov子空间进行稀疏化和(ii)为快速收敛而最大程度地利用获得的稀疏结构来设计的。数值算例表明了该算法相对于固定/非固定环境中现有算法的优势。

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