The generality and easy programmability of modern sampling-based methods for maximisation of likelihoods and summarisation of posterior distributions have led to a tremendous increase in the complexity and dimensionality of the statistical models used in practice. However, these methods can often be extremely slow to converge, due to high correlations between, or weak identifiability of, certain model parameters. We present simple hierarchical centring reparametrisations that often give improved convergence for a broad class of normal linear mixed models. In particular, we study the two-stage hierarchical normal linear model, the Laird-Ware model for longitudinal data, and a general structure for hierarchically nested linear models. Using a...
This thesis consists of results relating to the theoretical and computational advances in modeling t...
Thesis (Ph. D.)--University of Washington, 2002The use of generalized linear mixed models is growing...
<p>Results are shown for A) the linear mixed model (LMM) and B) the low rank linear mixed model (LRL...
SUMMARY. We consider approximations to two-stage hierarchical models in which the second stage uses ...
The classical approach for estimating parameters in a non linear mixed model is to compute the maxim...
Hierarchical linear and generalized linear models can be fit using Gibbs samplers and Metropolis alg...
Mixture models implemented via the expectation-maximization (EM) algorithm are being increasingly us...
Nonlinear mixed-effects (NLME) models and generalized linear mixed models (GLMM) are pop-ular in the...
This paper explores the asymptotic distribution of the restricted maximum likelihood estimator of th...
It is shown how hierarchical biomedical data, such as coming from longitudinal clinical trials, meta...
In this dissertation, I develop a multilevel approach to diagnosing and assessing t in mixed linea...
Using a Monte Carlo simulation and the Kenward-Roger (KR) correction for degrees of freedom this pap...
This dissertation consists of three chapters. It develops new methodologies to address two specific ...
This paperback edition is a reprint of the 2000 edition. This book provides a comprehensive treatmen...
Molenberghs, Verbeke, and Demétrio (2007) and Molenberghs et al. (2010) proposed a general framework...
This thesis consists of results relating to the theoretical and computational advances in modeling t...
Thesis (Ph. D.)--University of Washington, 2002The use of generalized linear mixed models is growing...
<p>Results are shown for A) the linear mixed model (LMM) and B) the low rank linear mixed model (LRL...
SUMMARY. We consider approximations to two-stage hierarchical models in which the second stage uses ...
The classical approach for estimating parameters in a non linear mixed model is to compute the maxim...
Hierarchical linear and generalized linear models can be fit using Gibbs samplers and Metropolis alg...
Mixture models implemented via the expectation-maximization (EM) algorithm are being increasingly us...
Nonlinear mixed-effects (NLME) models and generalized linear mixed models (GLMM) are pop-ular in the...
This paper explores the asymptotic distribution of the restricted maximum likelihood estimator of th...
It is shown how hierarchical biomedical data, such as coming from longitudinal clinical trials, meta...
In this dissertation, I develop a multilevel approach to diagnosing and assessing t in mixed linea...
Using a Monte Carlo simulation and the Kenward-Roger (KR) correction for degrees of freedom this pap...
This dissertation consists of three chapters. It develops new methodologies to address two specific ...
This paperback edition is a reprint of the 2000 edition. This book provides a comprehensive treatmen...
Molenberghs, Verbeke, and Demétrio (2007) and Molenberghs et al. (2010) proposed a general framework...
This thesis consists of results relating to the theoretical and computational advances in modeling t...
Thesis (Ph. D.)--University of Washington, 2002The use of generalized linear mixed models is growing...
<p>Results are shown for A) the linear mixed model (LMM) and B) the low rank linear mixed model (LRL...