Many scientific and engineering challenges -- ranging from pharmacokinetic drug dosage allocation and personalized medicine to marketing mix (4Ps) recommendations -- require an understanding of the unobserved heterogeneity in order to develop the best decision making-processes. In this paper, we develop a hypothesis test and the corresponding p-value for testing for the significance of the homogeneous structure in linear mixed models. A robust matching moment construction is used for creating a test that adapts to the size of the model sparsity. When unobserved heterogeneity at a cluster level is constant, we show that our test is both consistent and unbiased even when the dimension of the model is extremely high. Our theoretical results re...
Inference regarding the inclusion or exclusion of random effects in mixed models is challenging beca...
Mixed-effects models are commonly used in a large variety of disciplines to account for and describe...
Reliable estimation methods for non-linear mixed-effects models are now available and, although thes...
Graduation date: 1986This dissertation is concerned with hypothesis testing for\ud fixed effects in ...
Mixed models, with both random and fixed effects, are most often estimated on the assump-tion that t...
Linear mixed models (LMM) are commonly used when observations are no longer independent of each othe...
The objective of this paper is to find a simple way to test whether random effects are needed in a n...
Models with many signals, high-dimensional models, often impose structures on the signal strengths. ...
<p>We propose a methodology for testing linear hypothesis in high-dimensional linear models. The pro...
Mixed linear models are commonly used in repeated measures studies. They account for the dependence ...
We consider linear mixed models in which the observations are grouped. A `1-penalization on the fixe...
We introduce a diagnostic test for the mixing distribution in a generalised linear mixed model. The ...
Generalized linear mixed models have become a frequently used tool for the analysis of non-Gaussian ...
In this paper, we propose a consistent nonparametric test for linearity in a large dimensional panel...
Linear mixed models are a powerful inferential tool in modern statistics and have a wide range of ap...
Inference regarding the inclusion or exclusion of random effects in mixed models is challenging beca...
Mixed-effects models are commonly used in a large variety of disciplines to account for and describe...
Reliable estimation methods for non-linear mixed-effects models are now available and, although thes...
Graduation date: 1986This dissertation is concerned with hypothesis testing for\ud fixed effects in ...
Mixed models, with both random and fixed effects, are most often estimated on the assump-tion that t...
Linear mixed models (LMM) are commonly used when observations are no longer independent of each othe...
The objective of this paper is to find a simple way to test whether random effects are needed in a n...
Models with many signals, high-dimensional models, often impose structures on the signal strengths. ...
<p>We propose a methodology for testing linear hypothesis in high-dimensional linear models. The pro...
Mixed linear models are commonly used in repeated measures studies. They account for the dependence ...
We consider linear mixed models in which the observations are grouped. A `1-penalization on the fixe...
We introduce a diagnostic test for the mixing distribution in a generalised linear mixed model. The ...
Generalized linear mixed models have become a frequently used tool for the analysis of non-Gaussian ...
In this paper, we propose a consistent nonparametric test for linearity in a large dimensional panel...
Linear mixed models are a powerful inferential tool in modern statistics and have a wide range of ap...
Inference regarding the inclusion or exclusion of random effects in mixed models is challenging beca...
Mixed-effects models are commonly used in a large variety of disciplines to account for and describe...
Reliable estimation methods for non-linear mixed-effects models are now available and, although thes...