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A Near-Optimal Condition for Exact Sparse Recovery with Orthogonal Least Squares

机译:正交最小二乘精确稀疏恢复的最佳条件

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Orthogonal least squares (OLS) is a classic algorithm for sparse recovery and subset selection. In this paper, we analyze the performance guarantee of the OLS algorithm using the restricted isometry property (RIP) framework. Specifically, we show that OLS exactly recovers anyK-sparse signal in K iterations, provided that a sampling matrix satisfies the RIP withegin{equation*}delta_{K+1} lt rac{1}{sqrt{(1+delta_{K+1})K+rac{1}{4}}+rac{1}{2}}.end{equation*}Our result bridges the gap between the recent result of Wenet al. and the fundamental limit of OLS at which the exact reconstruction cannot be uniformly guaranteed. Furthermore, we show that the OLS algorithm is stable under measurement noise. Specifically, we show that if the signal-to-noise ratio (SNR) scales linearly with the sparsity of an input signal, then the $ell_{2}$-norm of the recovery error is bounded by the noise power.
机译:正交最小二乘(OLS)是用于稀疏恢复和子集选择的经典算法。在本文中,我们使用受限等距特性(RIP)框架分析了OLS算法的性能保证。具体来说,我们证明,只要采样矩阵满足\ begin {equation *} \ delta_ {K + 1} \ \ lt \ \ frac {1} {\ sqrt {(1+ \ delta_ {K + 1})K + \ frac {1} {4}} + \ frac {1} {2}}。\ end {equation *}我们的结果弥合了Wenet最近的结果之间的差距al。以及无法统一保证精确重建的OLS的基本限制。此外,我们证明了OLS算法在测量噪声下是稳定的。具体而言,我们表明,如果信噪比(SNR)与输入信号的稀疏度成线性比例关系,则恢复误差的\\ ell_ {2} $-范数受噪声功率的限制。

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