The convergence guarantees of a non-convex approach for sparse recovery using regularized least squares

Laming Chen, Yuantao Gu
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引用次数: 16

Abstract

Existing literatures suggest that sparsity is more likely to be induced with non-convex penalties, but the corresponding algorithms usually suffer from multiple local minima. In this paper, we introduce a class of sparsity-inducing penalties and provide the convergence guarantees of a non-convex approach for sparse recovery using regularized least squares. Theoretical analysis demonstrates that under some certain conditions, if the non-convexity of the penalty is below a threshold (which is in inverse proportion to the distance between the initialization and the sparse signal), the sparse signal can be stably recovered. Numerical simulations are implemented to verify the theoretical results in this paper and to compare the performance of this approach with other references.
正则最小二乘稀疏恢复非凸方法的收敛性保证
现有文献表明,非凸惩罚更容易产生稀疏性,但相应的算法通常存在多个局部最小值。本文引入了一类稀疏性诱导惩罚,并给出了正则化最小二乘稀疏恢复非凸方法的收敛性保证。理论分析表明,在一定条件下,如果惩罚的非凸性低于阈值(与初始化与稀疏信号的距离成反比),稀疏信号可以稳定恢复。通过数值仿真验证了本文的理论结果,并与其他文献进行了性能比较。
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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