Iterative thresholding algorithm based on non-convex method for modified lp-norm regularization minimization (1804.09385v1)
Abstract: Recently, the $\l_{p}$-norm regularization minimization problem $(P_{p}{\lambda})$ has attracted great attention in compressed sensing. However, the $\l_{p}$-norm $|x|{p}{p}$ in problem $(P{p}{\lambda})$ is nonconvex and non-Lipschitz for all $p\in(0,1)$, and there are not many optimization theories and methods are proposed to solve this problem. In fact, it is NP-hard for all $p\in(0,1)$ and $\lambda>0$. In this paper, we study two modified $\l_{p}$ regularization minimization problems to approximate the NP-hard problem $(P_{p}{\lambda})$. Inspired by the good performance of Half algorithm and $2/3$ algorithm in some sparse signal recovery problems, two iterative thresholding algorithms are proposed to solve the problems $(P_{p,1/2,\epsilon}{\lambda})$ and $(P_{p,2/3,\epsilon}{\lambda})$ respectively. Numerical results show that our algorithms perform effectively in finding the sparse signal in some sparse signal recovery problems for some proper $p\in(0,1)$.
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