Undirected graphical models, or Markov networks, are a popular class of statistical models, used in a wide variety of applications. Popular instances of this class include Gaussian graphical models and Ising models. In many settings, however, it might not be clear which subclass of graphical models to use, particularly for non-Gaussian and non-categorical data. In this paper, we consider a general sub-class of graphical models where the node-wise conditional distributions arise from exponential families. This allows us to derive multivariate graphical model distributions from univariate exponential family distributions, such as the Poisson, negative binomial, and exponential distributions. Our key contributions include a class of M-estimato...
The task of performing graphical model selection arises in many applications in science and engineer...
Learning the structure of a graphical model is a fundamental problem and it is used extensively to i...
The most promising class of statistical models for expressing structural properties of social networ...
Undirected graphical models, also known as Markov networks, enjoy popularity in a variety of applica...
The aim of this chapter is twofold. In the first part we will provide a brief overview of the mathem...
Graphical models are defined by: • a network structure, G = (V, E), either an undirected graph (Mark...
In this chapter we discuss the advantages of the use of probabilistic graphical models for modelling...
We provide a classification of graphical models according to their representation as exponential fam...
Thesis (Ph. D.)--University of Washington, 2004Graphical Markov models use graphs to represent depen...
Graphical Gaussian models have proven to be useful tools for exploring network structures based on m...
In the framework of graphical models the graphical representation of the association structure is us...
Probabilistic graphical models bring together graph theory and probability theory in a powerful form...
We investigate probabilistic graphical models that allow for both cycles and latent variables. For t...
The main topic of the doctoral thesis revolves around learning the structure of a graphical model fr...
This paper is a multidisciplinary review of empirical, statistical learning from a graphical model p...
The task of performing graphical model selection arises in many applications in science and engineer...
Learning the structure of a graphical model is a fundamental problem and it is used extensively to i...
The most promising class of statistical models for expressing structural properties of social networ...
Undirected graphical models, also known as Markov networks, enjoy popularity in a variety of applica...
The aim of this chapter is twofold. In the first part we will provide a brief overview of the mathem...
Graphical models are defined by: • a network structure, G = (V, E), either an undirected graph (Mark...
In this chapter we discuss the advantages of the use of probabilistic graphical models for modelling...
We provide a classification of graphical models according to their representation as exponential fam...
Thesis (Ph. D.)--University of Washington, 2004Graphical Markov models use graphs to represent depen...
Graphical Gaussian models have proven to be useful tools for exploring network structures based on m...
In the framework of graphical models the graphical representation of the association structure is us...
Probabilistic graphical models bring together graph theory and probability theory in a powerful form...
We investigate probabilistic graphical models that allow for both cycles and latent variables. For t...
The main topic of the doctoral thesis revolves around learning the structure of a graphical model fr...
This paper is a multidisciplinary review of empirical, statistical learning from a graphical model p...
The task of performing graphical model selection arises in many applications in science and engineer...
Learning the structure of a graphical model is a fundamental problem and it is used extensively to i...
The most promising class of statistical models for expressing structural properties of social networ...