Variance components estimation and mixed model analysis are central themes in statistics with applications in numerous scientific disciplines. Despite the best efforts of generations of statisticians and numerical analysts, maximum likelihood estimation (MLE) and restricted MLE of variance component models remain numerically challenging. Building on the minorization–maximization (MM) principle, this article presents a novel iterative algorithm for variance components estimation. Our MM algorithm is trivial to implement and competitive on large data problems. The algorithm readily extends to more complicated problems such as linear mixed models, multivariate response models possibly with missing data, maximum a posteriori estimation, and pen...
Starting with the general linear model Y=Xβ+ε where E(εε')=θ1V1+ ... +θpVp, the theory of minimum no...
AbstractMaximum likelihood estimation of the multivariatetdistribution, especially with unknown degr...
Most problems in frequentist statistics involve optimization of a function such as a likelihood or a...
Variance components estimation and mixed model analysis are central themes in statistics with applic...
Logistic linear mixed models are widely used in experimental designs and genetic analyses of binary ...
Multiple-trait and random regression models have multiplied the number of equations needed for the e...
The aim of this article is to present an estimation procedure for both fixed effects and variance c...
Residual maximum likelihood (REML) estimation is a popular method of estimation for variance paramet...
Variance components estimation originated with estimating error variance in analysis of variance by ...
Motivated by recent extensive studies of maximum likelihood (ML) algorithms, especially EM-type sche...
The computation of the maximum likelihood (ML) estimator for heteroscedastic regression models is co...
This dissertation aims at searching for the optimum variance components estimates in the mixed-effec...
Estimation of variance components by Monte Carlo (MC) expectation maximization (EM) restricted maxim...
Suppose that y is an n x 1 observable random vector, whose distribution is multivariate normal with ...
Estimation of variance components by Monte Carlo (MC) expectation maximization (EM) restricted maxim...
Starting with the general linear model Y=Xβ+ε where E(εε')=θ1V1+ ... +θpVp, the theory of minimum no...
AbstractMaximum likelihood estimation of the multivariatetdistribution, especially with unknown degr...
Most problems in frequentist statistics involve optimization of a function such as a likelihood or a...
Variance components estimation and mixed model analysis are central themes in statistics with applic...
Logistic linear mixed models are widely used in experimental designs and genetic analyses of binary ...
Multiple-trait and random regression models have multiplied the number of equations needed for the e...
The aim of this article is to present an estimation procedure for both fixed effects and variance c...
Residual maximum likelihood (REML) estimation is a popular method of estimation for variance paramet...
Variance components estimation originated with estimating error variance in analysis of variance by ...
Motivated by recent extensive studies of maximum likelihood (ML) algorithms, especially EM-type sche...
The computation of the maximum likelihood (ML) estimator for heteroscedastic regression models is co...
This dissertation aims at searching for the optimum variance components estimates in the mixed-effec...
Estimation of variance components by Monte Carlo (MC) expectation maximization (EM) restricted maxim...
Suppose that y is an n x 1 observable random vector, whose distribution is multivariate normal with ...
Estimation of variance components by Monte Carlo (MC) expectation maximization (EM) restricted maxim...
Starting with the general linear model Y=Xβ+ε where E(εε')=θ1V1+ ... +θpVp, the theory of minimum no...
AbstractMaximum likelihood estimation of the multivariatetdistribution, especially with unknown degr...
Most problems in frequentist statistics involve optimization of a function such as a likelihood or a...