none2A computationally efficient method to estimate seemingly unrelated regression equations models with orthogonal regressors is presented. The method considers the estimation problem as a generalized linear least squares problem (GLLSP). The basic tool for solving the GLLSP is the generalized QR decomposition of the block-diagonal exogenous matrix and Cholesky factor C otimes I_T of the covariance matrix of the disturbances. Exploiting the orthogonality property of the regressors the estimation problem is reduced into smaller and independent GLLSPs. The solution of each of the smaller GLLSPs is obtained by a single-column modification of C. This reduces significantly the computational burden of the standard estimation procedure, especiall...
: The problem of n-dimensional orthogonal linear regression is a problem of finding an n-dimensional...
In this note, based on the generalized method of moments (GMM) interpretation of the usual ordinary ...
Sparse regression modeling is addressed using a generalized kernel model in which kernel regressor h...
AbstractA computationally efficient method to estimate seemingly unrelated regression equations mode...
A computationally efficient method to estimate seemingly unrelated regression equations models with ...
The computational efficiency of various algorithms for solving seemingly unrelated regressions (SUR)...
An algorithm for computing the exact least trimmed squares (LTS) estimator of the standard regressio...
The computational solution of the seemingly unrelated regression model with unequal size observation...
The numerical solution of seemingly unrelated regression (SUR) models with vector autoregressive dis...
This article is concerned with the estimation problem of multicollinearity in two seemingly unrelate...
The paper proposes a locally regularised orthogonal least squares (LROLS) algorithm for constructing...
Computationally efficient and numerically stable methods for solving Seemingly Unrelated Regression ...
The paper proposes a novel construction algorithm for generalized Gaussian kernel regression models....
ARTICLE IN PRESS www.elsevier.com/locate/neucom A locally regularized orthogonal least squares (LROL...
Computationally efficient serial and parallel algorithms for estimating the general linear model are...
: The problem of n-dimensional orthogonal linear regression is a problem of finding an n-dimensional...
In this note, based on the generalized method of moments (GMM) interpretation of the usual ordinary ...
Sparse regression modeling is addressed using a generalized kernel model in which kernel regressor h...
AbstractA computationally efficient method to estimate seemingly unrelated regression equations mode...
A computationally efficient method to estimate seemingly unrelated regression equations models with ...
The computational efficiency of various algorithms for solving seemingly unrelated regressions (SUR)...
An algorithm for computing the exact least trimmed squares (LTS) estimator of the standard regressio...
The computational solution of the seemingly unrelated regression model with unequal size observation...
The numerical solution of seemingly unrelated regression (SUR) models with vector autoregressive dis...
This article is concerned with the estimation problem of multicollinearity in two seemingly unrelate...
The paper proposes a locally regularised orthogonal least squares (LROLS) algorithm for constructing...
Computationally efficient and numerically stable methods for solving Seemingly Unrelated Regression ...
The paper proposes a novel construction algorithm for generalized Gaussian kernel regression models....
ARTICLE IN PRESS www.elsevier.com/locate/neucom A locally regularized orthogonal least squares (LROL...
Computationally efficient serial and parallel algorithms for estimating the general linear model are...
: The problem of n-dimensional orthogonal linear regression is a problem of finding an n-dimensional...
In this note, based on the generalized method of moments (GMM) interpretation of the usual ordinary ...
Sparse regression modeling is addressed using a generalized kernel model in which kernel regressor h...