An algorithm is presented for the best least-squares fitting correlation matrix approximating a given missing value or improper correlation matrix. The proposed algorithm is based upon a solution for Mosier's oblique Procrustes rotation problem offered by ten Berge and Nevels. A necessary and sufficient condition is given for a solution to yield the unique global minimum of the least-squares function. Empirical verification of the condition indicates that the occurrence of non-optimal solutions with the proposed algorithm is very unlikely. A possible drawback of the optimal solution is that it is a singular matrix of necessity. In cases where singularity is undesirable, one may impose the additional nonsingularity constraint that the smalle...
Correlation matrices---symmetric positive semidefinite matrices with unit diagonal---are important ...
This is a follow up to “Solution of the least squares method problem of pairwise comparisons matrix”...
The problem of rotating a matrix orthogonally to a best least squares fit with another matrix of the...
An algorithm is presented for the best least-squares fitting correlation matrix approximating a give...
This paper provides a generalization of the Procrustes problem in which the errors are weighted from...
Correlation matrices have many applications, particularly in marketing and financial economics - suc...
A method is offered for orthogonal Procrustes rotation of two or more matrices with missing values, ...
Bailey and Gower examined the least squares approximation C to a symmetric matrix B, when the square...
For n-dimensional real-valued matrix A, the computation of nearest correlation matrix; that is, a sy...
The theoretical aspect of least squares. This article contains a slightly modified presentation of t...
Firstly, we describe and investigate the algorithm of Qi and Sun which solves the problem of finding...
We desire to find a correlation matrix of a given rank that is as close as possible to an input matr...
Correlation matrices—symmetric positive semidefinite matrices with unit diagonal— are important in s...
This paper addresses the problem of rotating a factor matrix obliquely to a least squares fit to a ...
AbstractGeometric optimisation algorithms are developed that efficiently find the nearest low-rank c...
Correlation matrices---symmetric positive semidefinite matrices with unit diagonal---are important ...
This is a follow up to “Solution of the least squares method problem of pairwise comparisons matrix”...
The problem of rotating a matrix orthogonally to a best least squares fit with another matrix of the...
An algorithm is presented for the best least-squares fitting correlation matrix approximating a give...
This paper provides a generalization of the Procrustes problem in which the errors are weighted from...
Correlation matrices have many applications, particularly in marketing and financial economics - suc...
A method is offered for orthogonal Procrustes rotation of two or more matrices with missing values, ...
Bailey and Gower examined the least squares approximation C to a symmetric matrix B, when the square...
For n-dimensional real-valued matrix A, the computation of nearest correlation matrix; that is, a sy...
The theoretical aspect of least squares. This article contains a slightly modified presentation of t...
Firstly, we describe and investigate the algorithm of Qi and Sun which solves the problem of finding...
We desire to find a correlation matrix of a given rank that is as close as possible to an input matr...
Correlation matrices—symmetric positive semidefinite matrices with unit diagonal— are important in s...
This paper addresses the problem of rotating a factor matrix obliquely to a least squares fit to a ...
AbstractGeometric optimisation algorithms are developed that efficiently find the nearest low-rank c...
Correlation matrices---symmetric positive semidefinite matrices with unit diagonal---are important ...
This is a follow up to “Solution of the least squares method problem of pairwise comparisons matrix”...
The problem of rotating a matrix orthogonally to a best least squares fit with another matrix of the...