AbstractMotivated by analysis of gene expression data measured over different tissues or over time, we consider matrix-valued random variable and matrix-normal distribution, where the precision matrices have a graphical interpretation for genes and tissues, respectively. We present a l1 penalized likelihood method and an efficient coordinate descent-based computational algorithm for model selection and estimation in such matrix normal graphical models (MNGMs). We provide theoretical results on the asymptotic distributions, the rates of convergence of the estimates and the sparsistency, allowing both the numbers of genes and tissues to diverge as the sample size goes to infinity. Simulation results demonstrate that the MNGMs can lead to a be...
International audienceGaussian graphical models are widely utilized to infer and visualize networks ...
The majority of methods for sparse precision matrix estimation rely on computationally expensive pro...
Gaussian graphical model (GGM) is an useful tool to describe the undirected associ-ations among the ...
AbstractMotivated by analysis of gene expression data measured over different tissues or over time, ...
A tuning-free procedure is proposed to estimate the covariate-adjusted Gaussian graphical model. For...
<p>Gaussian graphical models represent the underlying graph structure of conditional dependence betw...
The thesis considers the estimation of sparse precision matrices in the highdimensional setting. Fir...
Graphical models are widely used to represent the dependency relationship among random variables. In...
Graphical models are widely used to represent the dependency relationship among random variables. In...
Gaussian graphical models are widely used to represent conditional dependence among random variables...
44 pagesApplications on inference of biological networks have raised a strong interest in the proble...
44 pagesApplications on inference of biological networks have raised a strong interest in the proble...
Gaussian graphical models are widely used to represent conditional dependence among random variables...
The task of performing graphical model selection arises in many applications in science and engineer...
The task of performing graphical model selection arises in many applications in science and engineer...
International audienceGaussian graphical models are widely utilized to infer and visualize networks ...
The majority of methods for sparse precision matrix estimation rely on computationally expensive pro...
Gaussian graphical model (GGM) is an useful tool to describe the undirected associ-ations among the ...
AbstractMotivated by analysis of gene expression data measured over different tissues or over time, ...
A tuning-free procedure is proposed to estimate the covariate-adjusted Gaussian graphical model. For...
<p>Gaussian graphical models represent the underlying graph structure of conditional dependence betw...
The thesis considers the estimation of sparse precision matrices in the highdimensional setting. Fir...
Graphical models are widely used to represent the dependency relationship among random variables. In...
Graphical models are widely used to represent the dependency relationship among random variables. In...
Gaussian graphical models are widely used to represent conditional dependence among random variables...
44 pagesApplications on inference of biological networks have raised a strong interest in the proble...
44 pagesApplications on inference of biological networks have raised a strong interest in the proble...
Gaussian graphical models are widely used to represent conditional dependence among random variables...
The task of performing graphical model selection arises in many applications in science and engineer...
The task of performing graphical model selection arises in many applications in science and engineer...
International audienceGaussian graphical models are widely utilized to infer and visualize networks ...
The majority of methods for sparse precision matrix estimation rely on computationally expensive pro...
Gaussian graphical model (GGM) is an useful tool to describe the undirected associ-ations among the ...