The problem of low-rank approximation with convex constraints, which appears in data analysis, system identification, model order reduction, low-order controller design, and low-complexity modeling is considered. Given a matrix, the objective is to find a low-rank approximation that meets rank and convex constraints while minimizing the distance to the matrix in the squared Frobenius norm. In many situations, this nonconvex problem is convexified by nuclear-norm regularization. However, we will see that the approximations obtained by this method may be far from optimal. In this paper, we propose an alternative convex relaxation that uses the convex envelope of the squared Frobenius norm and the rank constraint. With this approach, easily ve...
We propose a general framework for reduced-rank modeling of matrix-valued data. By applying a genera...
In this tutorial paper, we consider the problem of minimizing the rank of a matrix over a convex set...
Abstract—In this paper, the problem of matrix rank mini-mization under affine constraints is address...
The problem of low-rank approximation with convex constraints, which appears in data analysis, syste...
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...
Low rank approximation is an important tool in many applications. Given an observed matrix with elem...
Optimization problems with rank constraints appear in many diverse fields such as control, machine l...
Optimization problems with rank constraints appear in many diverse fields such as control, machine l...
This thesis addresses problems which require low-rank solutions under convex constraints. In particu...
This paper considers the problem of finding a low rank matrix from observations of linear combinatio...
This paper considers the problem of finding a low rank matrix from observations of linear combinatio...
A convex envelope for the problem of finding the best approximation to a given matrix with a prescri...
This paper considers the problem of recovering either a low rank matrix or a sparse vector from obse...
We explore a general statistical framework for low-rank modeling of matrix-valued data, based on con...
We propose a general framework for reduced-rank modeling of matrix-valued data. By applying a genera...
In this tutorial paper, we consider the problem of minimizing the rank of a matrix over a convex set...
Abstract—In this paper, the problem of matrix rank mini-mization under affine constraints is address...
The problem of low-rank approximation with convex constraints, which appears in data analysis, syste...
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...
Low rank approximation is an important tool in many applications. Given an observed matrix with elem...
Optimization problems with rank constraints appear in many diverse fields such as control, machine l...
Optimization problems with rank constraints appear in many diverse fields such as control, machine l...
This thesis addresses problems which require low-rank solutions under convex constraints. In particu...
This paper considers the problem of finding a low rank matrix from observations of linear combinatio...
This paper considers the problem of finding a low rank matrix from observations of linear combinatio...
A convex envelope for the problem of finding the best approximation to a given matrix with a prescri...
This paper considers the problem of recovering either a low rank matrix or a sparse vector from obse...
We explore a general statistical framework for low-rank modeling of matrix-valued data, based on con...
We propose a general framework for reduced-rank modeling of matrix-valued data. By applying a genera...
In this tutorial paper, we consider the problem of minimizing the rank of a matrix over a convex set...
Abstract—In this paper, the problem of matrix rank mini-mization under affine constraints is address...