We consider low-rank approximation of affinely structured matrices with missing elements. The method pro-posed is based on reformulation of the problem as inner and outer optimization. The inner minimization is a singular linear least-norm problem and admits an analytic solution. The outer problem is a nonlinear least squares problem and is solved by local optimization methods: minimization subject to quadratic equality constraints and unconstrained minimization with regularized cost function. The method is generalized to weighted low-rank ap-proximation with missing values and is illustrated on approximate low-rank matrix completion, system identifica-tion, and data-driven simulation problems. An extended version of the paper is a literate...
In this paper, we consider the so-called structured low rank approximation (SLRA) problem as a probl...
In this paper, we consider the so-called structured low rank approximation (SLRA) problem as a probl...
In this paper, we consider the so-called structured low rank approximation (SLRA) problem as a probl...
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...
We consider low-rank approximation of affinely structured matrices with missing elements. The method...
Abstract. We consider low-rank approximation of affinely structured matrices with missing elements. ...
The approach of SIAM J. Matrix Anal. Appl., 26(4):1083–1099 for solving structured total least squar...
The approach of SIAM J. Matrix Anal. Appl., 26(4):1083–1099 for solving structured total least squar...
Rank deficiency of a data matrix is equivalent to the existence of an exact linear model for the dat...
Rank deficiency of a data matrix is equivalent to the existence of an exact linear model for the dat...
Abstract Low-rank matrix approximation has applications in many fields, such as 3D reconstruction fr...
Abstract. We consider the problem of approximating an affinely structured matrix, for example, a Han...
The calculation of a low-rank approximation of a matrix is a fundamental operation in many computer ...
The calculation of a low-rank approximation of a matrix is a fundamental operation in many computer ...
In this paper, we consider the so-called structured low rank approximation (SLRA) problem as a probl...
In this paper, we consider the so-called structured low rank approximation (SLRA) problem as a probl...
In this paper, we consider the so-called structured low rank approximation (SLRA) problem as a probl...
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...
We consider low-rank approximation of affinely structured matrices with missing elements. The method...
Abstract. We consider low-rank approximation of affinely structured matrices with missing elements. ...
The approach of SIAM J. Matrix Anal. Appl., 26(4):1083–1099 for solving structured total least squar...
The approach of SIAM J. Matrix Anal. Appl., 26(4):1083–1099 for solving structured total least squar...
Rank deficiency of a data matrix is equivalent to the existence of an exact linear model for the dat...
Rank deficiency of a data matrix is equivalent to the existence of an exact linear model for the dat...
Abstract Low-rank matrix approximation has applications in many fields, such as 3D reconstruction fr...
Abstract. We consider the problem of approximating an affinely structured matrix, for example, a Han...
The calculation of a low-rank approximation of a matrix is a fundamental operation in many computer ...
The calculation of a low-rank approximation of a matrix is a fundamental operation in many computer ...
In this paper, we consider the so-called structured low rank approximation (SLRA) problem as a probl...
In this paper, we consider the so-called structured low rank approximation (SLRA) problem as a probl...
In this paper, we consider the so-called structured low rank approximation (SLRA) problem as a probl...