Skip to main content
Genetics, Selection, Evolution : GSE logoLink to Genetics, Selection, Evolution : GSE
. 2008 May 15;40(3):295–308. doi: 10.1186/1297-9686-40-3-295

Data transformation for rank reduction in multi-trait MACE model for international bull comparison

Joaquim Tarres 1,2,, Zengting Liu 1, Vincent Ducrocq 2, Friedrich Reinhardt 1, Reinhard Reents 1
PMCID: PMC2674903  PMID: 18400151

Abstract

Since many countries use multiple lactation random regression test day models in national evaluations for milk production traits, a random regression multiple across-country evaluation (MACE) model permitting a variable number of correlated traits per country should be used in international dairy evaluations. In order to reduce the number of within country traits for international comparison, three different MACE models were implemented based on German daughter yield deviation data and compared to the random regression MACE. The multiple lactation MACE model analysed daughter yield deviations on a lactation basis reducing the rank from nine random regression coefficients to three lactations. The lactation breeding values were very accurate for old bulls, but not for the youngest bulls with daughters with short lactations. The other two models applied principal component analysis as the dimension reduction technique: one based on eigenvalues of a genetic correlation matrix and the other on eigenvalues of a combined lactation matrix. The first one showed that German data can be transformed from nine traits to five eigenfunctions without losing much accuracy in any of the estimated random regression coefficients. The second one allowed performing rank reductions to three eigenfunctions without having the problem of young bulls with daughters with short lactations.

Keywords: rank reduction, principal components, genetic correlation matrix, multiple across country evaluation, dairy cattle

Full Text

The Full Text of this article is available as a PDF (94.5 KB).


Articles from Genetics, Selection, Evolution : GSE are provided here courtesy of BMC

RESOURCES