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

<p>Abstract</p> <p>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 sho...

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Main Authors: Ducrocq Vincent, Liu Zengting, Tarres Joaquim, Reinhardt Friedrich, Reents Reinhard
Format: Article
Language:deu
Published: BMC 2008-05-01
Series:Genetics Selection Evolution
Subjects:
Online Access:http://www.gsejournal.org/content/40/3/295
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spelling doaj-83e97566105e4c02878dc9d2eb15a2e42020-11-24T21:17:41ZdeuBMCGenetics Selection Evolution0999-193X1297-96862008-05-0140329530810.1186/1297-9686-40-3-295Data transformation for rank reduction in multi-trait MACE model for international bull comparisonDucrocq VincentLiu ZengtingTarres JoaquimReinhardt FriedrichReents Reinhard<p>Abstract</p> <p>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.</p> http://www.gsejournal.org/content/40/3/295rank reductionprincipal componentsgenetic correlation matrixmultiple across country evaluationdairy cattle
collection DOAJ
language deu
format Article
sources DOAJ
author Ducrocq Vincent
Liu Zengting
Tarres Joaquim
Reinhardt Friedrich
Reents Reinhard
spellingShingle Ducrocq Vincent
Liu Zengting
Tarres Joaquim
Reinhardt Friedrich
Reents Reinhard
Data transformation for rank reduction in multi-trait MACE model for international bull comparison
Genetics Selection Evolution
rank reduction
principal components
genetic correlation matrix
multiple across country evaluation
dairy cattle
author_facet Ducrocq Vincent
Liu Zengting
Tarres Joaquim
Reinhardt Friedrich
Reents Reinhard
author_sort Ducrocq Vincent
title Data transformation for rank reduction in multi-trait MACE model for international bull comparison
title_short Data transformation for rank reduction in multi-trait MACE model for international bull comparison
title_full Data transformation for rank reduction in multi-trait MACE model for international bull comparison
title_fullStr Data transformation for rank reduction in multi-trait MACE model for international bull comparison
title_full_unstemmed Data transformation for rank reduction in multi-trait MACE model for international bull comparison
title_sort data transformation for rank reduction in multi-trait mace model for international bull comparison
publisher BMC
series Genetics Selection Evolution
issn 0999-193X
1297-9686
publishDate 2008-05-01
description <p>Abstract</p> <p>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.</p>
topic rank reduction
principal components
genetic correlation matrix
multiple across country evaluation
dairy cattle
url http://www.gsejournal.org/content/40/3/295
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