This thesis is concerned with graphical Gaussian models with equality constraints on the concentration or partial correlation matrix introduced by Højsgaard and Lauritzen (2008) as RCON and RCOR models. The models can be represented by vertex and edge coloured graphs G = (V,ε), where parameters associated with equally coloured vertices or edges are restricted to being identical.In the first part of this thesis we study the problem of estimability of a non-zero model mean μ if the covariance structure Σ is restricted to satisfy the constraints of an RCON or RCOR model but is otherwise unknown. Exploiting results in Kruskal (1968), we obtain a characterisation of suitable linear spaces Ω such that if Σ is restricted as above, the maximum like...
Coloured graphical models are Gaussian statistical models determined by an undirected coloured graph...
We propose penalized likelihood methods for estimating the concentration matrix in the Gaussian grap...
Graphical models have established themselves as fundamental tools through which to understand comple...
This thesis is concerned with graphical Gaussian models with equality constraints on the concentrati...
In this paper we present the R package gRc for statistical inference in graphical Gaussian models in...
In this paper we present the R package gRc for statistical inference in graphical Gaussian models in...
Summary. We introduce new types of graphical Gaussian models by placing symmetry restrictions on the...
In this paper we present the R package gRc for statistical inference in graphical Gaussian models in...
In this paper we introduce restricted concentration models (RCMs) as a class of graphical models for...
A colored Gaussian graphical model is a linear concentration model in which equalities among the con...
Gaussian graphical models have become a well-recognized tool for the analysis of conditional indepen...
A Gaussian graphical model is a graph representation of conditional independence relations among Gau...
We consider the Bayesian analysis of undirected graphical Gaussian models with edges and vertices sy...
<div><p>We propose a model selection algorithm for high-dimensional clustered data. Our algorithm co...
Gaussian graphical models have become a well-recognized tool for the analysis of conditional indepen...
Coloured graphical models are Gaussian statistical models determined by an undirected coloured graph...
We propose penalized likelihood methods for estimating the concentration matrix in the Gaussian grap...
Graphical models have established themselves as fundamental tools through which to understand comple...
This thesis is concerned with graphical Gaussian models with equality constraints on the concentrati...
In this paper we present the R package gRc for statistical inference in graphical Gaussian models in...
In this paper we present the R package gRc for statistical inference in graphical Gaussian models in...
Summary. We introduce new types of graphical Gaussian models by placing symmetry restrictions on the...
In this paper we present the R package gRc for statistical inference in graphical Gaussian models in...
In this paper we introduce restricted concentration models (RCMs) as a class of graphical models for...
A colored Gaussian graphical model is a linear concentration model in which equalities among the con...
Gaussian graphical models have become a well-recognized tool for the analysis of conditional indepen...
A Gaussian graphical model is a graph representation of conditional independence relations among Gau...
We consider the Bayesian analysis of undirected graphical Gaussian models with edges and vertices sy...
<div><p>We propose a model selection algorithm for high-dimensional clustered data. Our algorithm co...
Gaussian graphical models have become a well-recognized tool for the analysis of conditional indepen...
Coloured graphical models are Gaussian statistical models determined by an undirected coloured graph...
We propose penalized likelihood methods for estimating the concentration matrix in the Gaussian grap...
Graphical models have established themselves as fundamental tools through which to understand comple...