Penalized Estimation of Covariance Matrices with Flexible Amounts of Shrinkage

Author(s)
Meyer, Karin
Publication Date
2013
Abstract
Penalized maximum likelihood estimation has been advocated for its capability to yield substantially improved estimates of covariance matrices, but so far only cases with equal numbers of records have been considered. We show that a generalization of the inverse Wishart distribution can be utilised to derive penalties which allow for differential penalization for different blocks of the matrices to be estimated. However, this requires multiple tuning factors to be determined and thus can increase computational requirements markedly. Simulation results are presented which indicate that the additional gains obtainable for estimates of genetic covariance components - over and above those from a simple, non-differential scheme - are moderate, even if numbers of records for different traits differ by orders of magnitude.
Citation
Proceedings of the Association for the Advancement of Animal Breeding and Genetics, v.20, p. 428-431
ISBN
9780473260569
ISSN
1328-3227
Link
Language
en
Publisher
Association for the Advancement of Animal Breeding and Genetics (AAABG)
Title
Penalized Estimation of Covariance Matrices with Flexible Amounts of Shrinkage
Type of document
Conference Publication
Entity Type
Publication

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