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As surrogate functions of L 0 -norm, many nonconvex penalty functions have been proposed to enhance the sparse vector recovery. It is easy to extend these nonconvex penalty functions on singular values of a matrix to enhance low-rank matrix recovery. However, different from convex optimization, solving the nonconvex low-rank minimization problem is much more challenging than the nonconvex sparse minimization problem. We observe that all the existing nonconvex penalty functions are concave and monotonically increasing on [0, ∞). Thus their gradients are decreasing functions. Based on this property, we propose an Iteratively Reweighted Nuclear Norm (IRNN) algorithm to solve the nonconvex nonsmooth low-rank minimization problem. IRNN iteratively solves a Weighted Singular Value Thresholding (WSVT) problem. By setting the weight vector as the gradient of the concave penalty function, the WSVT problem has a closed form solution. In theory, we prove that IRNN decreases the objective function value monotonically, and any limit point is a stationary point. Extensive experiments on both synthetic data and real images demonstrate that IRNN enhances the low-rank matrix recovery compared with state-of-the-art convex algorithms.
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Canyi Lu
Zhejiang Sci-Tech University
Jinhui Tang
Nanjing Forestry University
Shuicheng Yan
Shihezi University
National University of Singapore
Peking University
Nanjing University of Science and Technology
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Lu et al. (Sun,) studied this question.
synapsesocial.com/papers/6a0fc5752badbc352afeb0b4 — DOI: https://doi.org/10.1109/cvpr.2014.526