Abstract—In this paper, the problem of matrix rank mini-mization under affine constraints is addressed. The state-of-the-art algorithms can recover matrices with a rank much less than what is sufficient for the uniqueness of the solution of this optimization problem. We propose an algorithm based on a smooth approximation of the rank function, which practically improves recovery limits on the rank of the solution. This approximation leads to a non-convex program; thus, to avoid getting trapped in local solutions, we use the following scheme. Initially, a rough approximation of the rank function subject to the affine constraints is optimized. As the algorithm proceeds, finer approximations of the rank are optimized and the solver is initiali...
We consider low-rank approximation of affinely structured matrices with missing elements. The method...
We consider low-rank approximation of affinely structured matrices with missing elements. The method...
Given a data matrix with partially observed entries, the low-rank matrix completion problem is one o...
The affine rank minimization problem consists of finding a matrix of minimum rank that satisfies a g...
Many applications require recovering a matrix of minimal rank within an affine constraint set, with ...
In this paper we consider the classical problem of finding a low rank approximation of a given matri...
In this paper we consider the classical problem of finding a low rank approximation of a given matri...
For the problems of low-rank matrix completion, the efficiency of the widely used nuclear norm techn...
A low-rank matrix can be recovered from a small number of its linear measurements. As a special case...
As an emerging machine learning and information re-trieval technique, the matrix completion has been...
The problem of low-rank approximation with convex constraints, which appears in data analysis, syste...
The problem of finding a low rank approximation of a given measurement matrix is of key interest in ...
The problem of finding a low rank approximation of a given measurement matrix is of key interest in ...
The problem of finding a low rank approximation of a given measurement matrix is of key interest in ...
The problem of low-rank approximation with convex constraints, which appears in data analysis, syste...
We consider low-rank approximation of affinely structured matrices with missing elements. The method...
We consider low-rank approximation of affinely structured matrices with missing elements. The method...
Given a data matrix with partially observed entries, the low-rank matrix completion problem is one o...
The affine rank minimization problem consists of finding a matrix of minimum rank that satisfies a g...
Many applications require recovering a matrix of minimal rank within an affine constraint set, with ...
In this paper we consider the classical problem of finding a low rank approximation of a given matri...
In this paper we consider the classical problem of finding a low rank approximation of a given matri...
For the problems of low-rank matrix completion, the efficiency of the widely used nuclear norm techn...
A low-rank matrix can be recovered from a small number of its linear measurements. As a special case...
As an emerging machine learning and information re-trieval technique, the matrix completion has been...
The problem of low-rank approximation with convex constraints, which appears in data analysis, syste...
The problem of finding a low rank approximation of a given measurement matrix is of key interest in ...
The problem of finding a low rank approximation of a given measurement matrix is of key interest in ...
The problem of finding a low rank approximation of a given measurement matrix is of key interest in ...
The problem of low-rank approximation with convex constraints, which appears in data analysis, syste...
We consider low-rank approximation of affinely structured matrices with missing elements. The method...
We consider low-rank approximation of affinely structured matrices with missing elements. The method...
Given a data matrix with partially observed entries, the low-rank matrix completion problem is one o...