Post-Estimation Penalization: More 'PEP' for Estimates of Genetic Covariance Matrices

Author(s)
Meyer, Karin
Publication Date
2013
Abstract
Maximum likelihood estimation of genetic covariances subject to a penalty to reduce sampling variation has been shown to yield improved estimates, especially for analyses comprising many traits. However, this can increase computational requirements substantially. Similarly, penalties have been found to be beneficial in a maximum likelihood based approach for pooling results from analyses of subsets of traits. This paper examines the scope for using the latter method to apply penalties to results from multivariate analyses in a computationally undemanding post-estimation step. A simulation study is presented demonstrating that even slight changes to estimates in this way can result in 'regularized' values markedly closer to population values than standard, unpenalized estimates.
Citation
Proceedings of the Association for the Advancement of Animal Breeding and Genetics, v.20, p. 424-427
ISBN
9780473260569
ISSN
1328-3227
Link
Language
en
Publisher
Association for the Advancement of Animal Breeding and Genetics (AAABG)
Title
Post-Estimation Penalization: More 'PEP' for Estimates of Genetic Covariance Matrices
Type of document
Conference Publication
Entity Type
Publication

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