Rank minimization problems, which consist of finding a matrix of minimum rank subject to linear constraints, have been proposed in many areas of engineering and science. A specific problem is the matrix completion problem in which a low rank data matrix is recovered from incomplete samples of its entries by solving a rank penalized least squares problem. The rank penalty is in fact the l 0 norm of the matrix singular values. A convex relaxation of this penalty is the commonly used l 1 norm of the matrix singular values. In this paper we bridge the gap between these two penalties and propose a simple method for solving the l q , q ∈ (0, 1), penalized least squares problem for matrix completion. We illustrate with simulations comparing our method to others in terms of solution quality.
Guangyu ZhouXiaochen ZhaoWei Dai
A. V. SotnikovH. SchmidtM. WeihnachtM. HengstRobert MöckelJens GötzeG. Heide
Liang HeAi‐Guo WuGuang‐Ren Duan