textabstractGeometric optimisation algorithms are developed that efficiently find the nearest low-rank correlation matrix. We show, in numerical tests, that our methods compare favourably to the existing methods in the literature. The connection with the Lagrange multiplier method is established, along with an identification of whether a local minimum is a global minimum. An additional benefit of the geometric approach is that any weighted norm can be applied. The problem of finding the nearest low-rank correlation matrix occurs as part of the calibration of multi-factor interest rate market models to correlation
An $n\times n$ correlation matrix has $k$ factor structure if its off-diagonal agrees with that of a...
In this paper we consider general rank minimization problems with rank appearing in either objective...
Background: Low-rank approximation is used to interpret the features of a correlation matrix using v...
AbstractGeometric optimisation algorithms are developed that efficiently find the nearest low-rank c...
AbstractGeometric optimisation algorithms are developed that efficiently find the nearest low-rank c...
Abstract. A novel algorithm is developed for the problem of finding a low-rank correlation matrix ne...
A novel algorithm is developed for the problem of finding a low-rank correlation matrix nearest to a...
textabstractIn this paper a novel method is developed for the problem of finding a low-rank correlat...
AbstractLow-rank approximation of a correlation matrix is a constrained minimization problem that ca...
AbstractLow-rank approximation of a correlation matrix is a constrained minimization problem that ca...
Correlation matrices have many applications, particularly in marketing and financial economics - suc...
For n-dimensional real-valued matrix A, the computation of nearest correlation matrix; that is, a sy...
Firstly, we describe and investigate the algorithm of Qi and Sun which solves the problem of finding...
An $n\times n$ correlation matrix has $k$ factor structure if its off-diagonal agrees with that of a...
An $n\times n$ correlation matrix has $k$ factor structure if its off-diagonal agrees with that of a...
An $n\times n$ correlation matrix has $k$ factor structure if its off-diagonal agrees with that of a...
In this paper we consider general rank minimization problems with rank appearing in either objective...
Background: Low-rank approximation is used to interpret the features of a correlation matrix using v...
AbstractGeometric optimisation algorithms are developed that efficiently find the nearest low-rank c...
AbstractGeometric optimisation algorithms are developed that efficiently find the nearest low-rank c...
Abstract. A novel algorithm is developed for the problem of finding a low-rank correlation matrix ne...
A novel algorithm is developed for the problem of finding a low-rank correlation matrix nearest to a...
textabstractIn this paper a novel method is developed for the problem of finding a low-rank correlat...
AbstractLow-rank approximation of a correlation matrix is a constrained minimization problem that ca...
AbstractLow-rank approximation of a correlation matrix is a constrained minimization problem that ca...
Correlation matrices have many applications, particularly in marketing and financial economics - suc...
For n-dimensional real-valued matrix A, the computation of nearest correlation matrix; that is, a sy...
Firstly, we describe and investigate the algorithm of Qi and Sun which solves the problem of finding...
An $n\times n$ correlation matrix has $k$ factor structure if its off-diagonal agrees with that of a...
An $n\times n$ correlation matrix has $k$ factor structure if its off-diagonal agrees with that of a...
An $n\times n$ correlation matrix has $k$ factor structure if its off-diagonal agrees with that of a...
In this paper we consider general rank minimization problems with rank appearing in either objective...
Background: Low-rank approximation is used to interpret the features of a correlation matrix using v...