Recovery of sparse signals via Branch and Bound Least-Squares

Abolfazl Hashemi, H. Vikalo
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引用次数: 4

Abstract

We present an algorithm, referred to as Branch and Bound Least-Squares (BBLS), for the recovery of sparse signals from a few linear combinations of their entries. Sparse signal reconstruction is readily cast as the problem of finding a sparse solution to an underdetermined system of linear equations. To solve it, BBLS employs an efficient search strategy of traversing a tree whose nodes represent the columns of the coefficient matrix and selects a subset of those columns by relying on Orthogonal Least-Squares (OLS) procedure. We state sufficient conditions under which in noise-free settings BBLS with high probability constructs a tree path which corresponds to the true support of the unknown sparse signal. Moreover, we empirically demonstrate that BBLS provides performance superior to that of existing algorithms in terms of accuracy, running time, or both. In the scenarios where the columns of the coefficient matrix are characterized by high correlation, BBLS is particularly beneficial and significantly outperforms existing methods.
基于分支和界最小二乘的稀疏信号恢复
我们提出了一种称为分支和界最小二乘(BBLS)的算法,用于从稀疏信号的几个线性组合中恢复稀疏信号。稀疏信号重构很容易被描述为寻找一个欠定线性方程组的稀疏解的问题。为了解决这个问题,BBLS采用了一种高效的搜索策略,即遍历一棵节点表示系数矩阵列的树,并依靠正交最小二乘(OLS)过程选择这些列的子集。给出了在无噪声条件下,高概率BBLS构造出与未知稀疏信号的真实支持相对应的树路径的充分条件。此外,我们通过经验证明,在准确性、运行时间或两者兼而有之方面,BBLS提供的性能优于现有算法。在系数矩阵的列具有高相关性的情况下,BBLS特别有用,并且显著优于现有方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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