Minimum-variance unbiased estimates for linear regression models can be obtained by solving least-squares problems. The conjugate gradient method can be successfully used in solving the symmetric and positive definite normal equations obtained from these least-squares problems. Taking into account the results of Golub and Meurant (1997, 2009) [10,11], Hestenes and Stiefel (1952) [17], and Strakos and Tichy (2002) 1161, which make it possible to approximate the energy norm of the error during the conjugate gradient iterative process, we adapt the stopping criterion introduced by Arioli (2005) [18] to the normal equations taking into account the statistical properties of the underpinning linear regression problem. Moreover, we show how the energy norm of the error is linked to the chi(2)-distribution and to the Fisher-Snedecor distribution. Finally, we present the results of several numerical tests that experimentally validate the effectiveness of our stopping criteria. Crown Copyright (C) 2012 Published by Elsevier B.V. All rights reserved.
机构:
Department of Earth & Atmospheric Sciences,University of HoustonDepartment of Earth & Atmospheric Sciences,University of Houston
Wei Huang
HuaWei Zhou
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机构:
Department of Earth & Atmospheric Sciences,University of Houston
College of Marine Geosciences,Ocean University ofDepartment of Earth & Atmospheric Sciences,University of Houston