Multiple-trait and random regression models have multiplied the number of equations needed for the estimation of variance components. To avoid inversion or decomposition of a large coefficient matrix, we propose estimation of variance components by Monte Carlo expectation maximization restricted maximum likelihood (MC EM REML) for multiple-trait linear mixed models. Implementation is based on full-model sampling for calculating the prediction error variances required for EM REML. Performance of the analytical and the MC EM REML algorithm was compared using a simulated and a field data set. For field data, results from both algorithms corresponded well even with one MC sample within an MC EM REML round. The magnitude of the standard errors of e...
Logistic linear mixed models are widely used in experimental designs and genetic analyses of binary ...
Maximum likelihood (ML) estimation of generalized linear mixed models (GLMMs) is technically challen...
It is shown that maximum likelihood estimation of variance components from twin data can be paramete...
Estimation of variance components by Monte Carlo (MC) expectation maximization (EM) restricted maxim...
Estimation of variance components by Monte Carlo (MC) expectation maximization (EM) restricted maxim...
Residual maximum likelihood (REML) estimation is a popular method of estimation for variance paramet...
Linear mixed models are regularly applied to animal and plant breeding data to evaluate genetic pote...
Variance components estimation and mixed model analysis are central themes in statistics with applic...
Estimation of variance components by Monte Carlo (MC) expectation maximization (EM) restricted maxim...
Two methods of computing Monte Carlo estimators of variance components using restricted maximum like...
13 pages, 1 article*A Computer Routine for the Estimation of Variance Components in the General Mixe...
We aim to promote the use of the modified profile likelihood function for estimating the variance pa...
Generalized linear mixed models have been widely used in the analysis of correlated binary data aris...
This paper deals with symmetrical data that can be modelled based on Gaussian distribution, such as ...
Calculation of the exact prediction error variance covariance matrix is often computationally too de...
Logistic linear mixed models are widely used in experimental designs and genetic analyses of binary ...
Maximum likelihood (ML) estimation of generalized linear mixed models (GLMMs) is technically challen...
It is shown that maximum likelihood estimation of variance components from twin data can be paramete...
Estimation of variance components by Monte Carlo (MC) expectation maximization (EM) restricted maxim...
Estimation of variance components by Monte Carlo (MC) expectation maximization (EM) restricted maxim...
Residual maximum likelihood (REML) estimation is a popular method of estimation for variance paramet...
Linear mixed models are regularly applied to animal and plant breeding data to evaluate genetic pote...
Variance components estimation and mixed model analysis are central themes in statistics with applic...
Estimation of variance components by Monte Carlo (MC) expectation maximization (EM) restricted maxim...
Two methods of computing Monte Carlo estimators of variance components using restricted maximum like...
13 pages, 1 article*A Computer Routine for the Estimation of Variance Components in the General Mixe...
We aim to promote the use of the modified profile likelihood function for estimating the variance pa...
Generalized linear mixed models have been widely used in the analysis of correlated binary data aris...
This paper deals with symmetrical data that can be modelled based on Gaussian distribution, such as ...
Calculation of the exact prediction error variance covariance matrix is often computationally too de...
Logistic linear mixed models are widely used in experimental designs and genetic analyses of binary ...
Maximum likelihood (ML) estimation of generalized linear mixed models (GLMMs) is technically challen...
It is shown that maximum likelihood estimation of variance components from twin data can be paramete...