The multiple-trait derivative-free REML set of programs was written to handle partially missing data for multiple-trait analyses as well as single- trait models. Standard errors of genetic parameters were reported for univariate models and for multiple-trait analyses only when all traits were measured on animals with records. In addition to estimating (co)variance components for multiple-trait models with partially missing data, this paper shows how the multiple-trait derivative-free REML set of programs can also estimate SE by augmenting the data file when not all animals have all traits measured. Although the standard practice has been to eliminate records with partially missing data, that practice uses only a subset of the available data...
An algorithm for approximation of reliability for multiple traits by multiple diagonalization was mo...
Many biological traits are discretely distributed in phenotype but continuously distributed in genet...
Unbiased estimation of single gene effects can only be achieved by estimating them simultaneously wi...
The multiple-trait derivative-free REML set of programs was written to handle partially missing data...
The widespread use of the set of multiple- trait derivative-free REML programs for prediction of bre...
The widespread use of the set of multiple- trait derivative-free REML programs for prediction of bre...
Estimates of variances and covariances by restricted maximum likelihood (REML) have desirable proper...
Estimation of (co)variance components by derivative-free REML requires repeated evaluation of the lo...
Linear mixed models are regularly applied to animal and plant breeding data to evaluate genetic pote...
Restricted maximum likelihood was used to estimate variance and covariance components in a multiple ...
Genetic parameters were estimated using relationships between animals that were based either on pedi...
International audienceIn an Expectation-Maximization type Restricted Maximum Likelihood (REML) proce...
In an Expectation-Maximization type Restricted Maximum Likelihood (REML) procedure, the estimation...
BACKGROUND: In pedigreed populations with a major gene segregating for a quantitative trait, it is n...
A set of FORTRAN programs to implement a multiple-trait Gibbs sampling algorithm for (co)variance co...
An algorithm for approximation of reliability for multiple traits by multiple diagonalization was mo...
Many biological traits are discretely distributed in phenotype but continuously distributed in genet...
Unbiased estimation of single gene effects can only be achieved by estimating them simultaneously wi...
The multiple-trait derivative-free REML set of programs was written to handle partially missing data...
The widespread use of the set of multiple- trait derivative-free REML programs for prediction of bre...
The widespread use of the set of multiple- trait derivative-free REML programs for prediction of bre...
Estimates of variances and covariances by restricted maximum likelihood (REML) have desirable proper...
Estimation of (co)variance components by derivative-free REML requires repeated evaluation of the lo...
Linear mixed models are regularly applied to animal and plant breeding data to evaluate genetic pote...
Restricted maximum likelihood was used to estimate variance and covariance components in a multiple ...
Genetic parameters were estimated using relationships between animals that were based either on pedi...
International audienceIn an Expectation-Maximization type Restricted Maximum Likelihood (REML) proce...
In an Expectation-Maximization type Restricted Maximum Likelihood (REML) procedure, the estimation...
BACKGROUND: In pedigreed populations with a major gene segregating for a quantitative trait, it is n...
A set of FORTRAN programs to implement a multiple-trait Gibbs sampling algorithm for (co)variance co...
An algorithm for approximation of reliability for multiple traits by multiple diagonalization was mo...
Many biological traits are discretely distributed in phenotype but continuously distributed in genet...
Unbiased estimation of single gene effects can only be achieved by estimating them simultaneously wi...