Computationally efficient serial and parallel algorithms for estimating the general linear model are proposed. The sequential block-recursive algorithm is an adaptation of a known Givens strategy that has as a main component the Generalized QR decomposition. The proposed algorithm is based on orthogonal transformations and exploits the triangular structure of the Cholesky QRD factor of the variance–covariance matrix. Specifically, it computes the estimator of the general linear model by solving recursively a series of smaller and smaller generalized linear least squares problems. The new algorithm is found to outperform significantly the corresponding LAPACK routine. A parallel version of the new sequential algorithm which utilizes an effic...
We present an estimating algorithm to fit linear and generalized linear models not involving the QR...
The estimation of parameters for a scalar linear system with rational transfer function is considere...
This paper provides an introduction to algorithms for fundamental linear algebra problems on various...
Computational strategies for estimating the seemingly unrelated regressions model after been updated...
Computationally efficient parallel algorithms for downdating the least squares estimator of the ordi...
In this paper, first a brief review is given of a fully pipelined algorithm for recursive least squa...
1 Scientific activity The research during the first nine months of the ERCIM fellowship was focused ...
A computationally efficient method to estimate seemingly unrelated regression equations models with ...
AbstractA computationally efficient method to estimate seemingly unrelated regression equations mode...
An algorithm for computing the exact least trimmed squares (LTS) estimator of the standard regressio...
none2A computationally efficient method to estimate seemingly unrelated regression equations models ...
Within the context of recursive least-squares, the implementation of a Householder algorithm for blo...
A new strategy for deriving the three-stage least squares (3SLS) estimator of the simultaneous equat...
Abstract-We present several new algorithms, and more generally a new approach, to recursive estimat...
Abstract—We show that the generalized total least squares (GTLS) problem with a singular noise covar...
We present an estimating algorithm to fit linear and generalized linear models not involving the QR...
The estimation of parameters for a scalar linear system with rational transfer function is considere...
This paper provides an introduction to algorithms for fundamental linear algebra problems on various...
Computational strategies for estimating the seemingly unrelated regressions model after been updated...
Computationally efficient parallel algorithms for downdating the least squares estimator of the ordi...
In this paper, first a brief review is given of a fully pipelined algorithm for recursive least squa...
1 Scientific activity The research during the first nine months of the ERCIM fellowship was focused ...
A computationally efficient method to estimate seemingly unrelated regression equations models with ...
AbstractA computationally efficient method to estimate seemingly unrelated regression equations mode...
An algorithm for computing the exact least trimmed squares (LTS) estimator of the standard regressio...
none2A computationally efficient method to estimate seemingly unrelated regression equations models ...
Within the context of recursive least-squares, the implementation of a Householder algorithm for blo...
A new strategy for deriving the three-stage least squares (3SLS) estimator of the simultaneous equat...
Abstract-We present several new algorithms, and more generally a new approach, to recursive estimat...
Abstract—We show that the generalized total least squares (GTLS) problem with a singular noise covar...
We present an estimating algorithm to fit linear and generalized linear models not involving the QR...
The estimation of parameters for a scalar linear system with rational transfer function is considere...
This paper provides an introduction to algorithms for fundamental linear algebra problems on various...