The problem of decomposing a given covariance matrix as the sum of a positive semi-definite matrix of given rank and a positive semi-definite diagonal matrix, is considered. We present a projection-type algorithm to address this problem. This algorithm appears to perform extremely well and is extremely fast even when the given covariance matrix has a very large dimension. The effectiveness of the algorithm is assessed through simulation studies and by applications to three real benchmark data-sets that are considered. A local convergence analysis of the algorithm is also presented
covariance structure analysis, factor analysis, Gauss-Newton, Newton-Raphson, Fisher Scoring, Fletch...
The classical alternating minimization (or projection) algorithm has been successful in the context ...
This paper proposes new algorithms for multichannel extensions of nonnegative matrix factorization (...
summary:The problem of decomposing a given covariance matrix as the sum of a positive semi-definite ...
© 2017 Dimitris Bertsimas, Martin S. Copenhaver, and Rahul Mazumder. Factor Analysis (FA) is a techn...
Alternating minimization of the infonnation divergence is used to derive an effective algorithm for ...
Structure-enforced matrix factorization (SeMF) represents a large class of mathematical models ap- p...
Given a positive definite covariance matrix $\widehat \Sigma$, we strive to construct an optimal \em...
Structure-enforced matrix factorization (SeMF) represents a large class of mathematical models ap-pe...
We extend the classic alternating direction method for convex optimization to solving the non-convex...
abstract: In this paper we make a first attempt at understanding how to build an optimal approximate...
Factor analysis, a statistical method for modeling the covariance structure of high dimensional data...
We present an algorithm for updating the symmetric factorization of a positive semi-definite matrix ...
Abstract Factor analysis is a classical multivariate dimensionality reduction techniq...
Alternating minimization is a widely used and empirically successful heuristic for matrix completion...
covariance structure analysis, factor analysis, Gauss-Newton, Newton-Raphson, Fisher Scoring, Fletch...
The classical alternating minimization (or projection) algorithm has been successful in the context ...
This paper proposes new algorithms for multichannel extensions of nonnegative matrix factorization (...
summary:The problem of decomposing a given covariance matrix as the sum of a positive semi-definite ...
© 2017 Dimitris Bertsimas, Martin S. Copenhaver, and Rahul Mazumder. Factor Analysis (FA) is a techn...
Alternating minimization of the infonnation divergence is used to derive an effective algorithm for ...
Structure-enforced matrix factorization (SeMF) represents a large class of mathematical models ap- p...
Given a positive definite covariance matrix $\widehat \Sigma$, we strive to construct an optimal \em...
Structure-enforced matrix factorization (SeMF) represents a large class of mathematical models ap-pe...
We extend the classic alternating direction method for convex optimization to solving the non-convex...
abstract: In this paper we make a first attempt at understanding how to build an optimal approximate...
Factor analysis, a statistical method for modeling the covariance structure of high dimensional data...
We present an algorithm for updating the symmetric factorization of a positive semi-definite matrix ...
Abstract Factor analysis is a classical multivariate dimensionality reduction techniq...
Alternating minimization is a widely used and empirically successful heuristic for matrix completion...
covariance structure analysis, factor analysis, Gauss-Newton, Newton-Raphson, Fisher Scoring, Fletch...
The classical alternating minimization (or projection) algorithm has been successful in the context ...
This paper proposes new algorithms for multichannel extensions of nonnegative matrix factorization (...