Chain graphs are a natural generalization of directed acyclic graphs and undirected graphs. However, the apparent simplicity of chain graphs belies the subtlety of the conditional independence hypotheses that they represent. There are many simple and apparently plausible, but ultimately fallacious, interpretations of chain graphs that are often invoked, implicitly or explicitly. These interpretations also lead to flawed methods for applying background knowledge to model selection. We present a valid interpretation by showing how the distribution corresponding to a chain graph may be generated from the equilibrium distributions of dynamic models with feed-back. These dynamic interpretations lead to a simple theory of intervention, extending ...
AbstractAs the Chain Event Graph (CEG) has a topology which represents sets of conditional independe...
<p>. Each of the nodes represents a subset of the measured phenotypes . The simplest interpretation...
We present a simple graphical theory unifying causal directed acyclic graphs (DAGs) and potential (a...
In this article we study the expressiveness of the different chain graph interpretations. Chain grap...
Probabilistic graphical models are today one of the most well used architectures for modelling and r...
In this paper we study how different theoretical concepts of Bayesian networks have been extended to...
A graphical model is a graph that represents a set of conditional independence relations among the v...
Graphical Markov models use graphs, either undirected, directed, or mixed, to represent possible dep...
Abstract: From their inception, causal systems models (more commonly known as structural-equations m...
Graphical Markov models use graphs, either undirected, directed, or mixed, to represent possible dep...
Chain Graph Models (CGs) are a widely used tool to describe the conditional independence relationshi...
Abstract. This paper deals with different chain graph interpretations and the relations between them...
The Probabilistic Graphical Models use graphs in order to represent the joint distribution of q vari...
Acyclic directed mixed graphs (ADMGs) are the graphs used by Pearl (Causality: models, reasoning, an...
Statistical network models based on Pairwise Markov Random Fields (PMRFs) are popular tools for anal...
AbstractAs the Chain Event Graph (CEG) has a topology which represents sets of conditional independe...
<p>. Each of the nodes represents a subset of the measured phenotypes . The simplest interpretation...
We present a simple graphical theory unifying causal directed acyclic graphs (DAGs) and potential (a...
In this article we study the expressiveness of the different chain graph interpretations. Chain grap...
Probabilistic graphical models are today one of the most well used architectures for modelling and r...
In this paper we study how different theoretical concepts of Bayesian networks have been extended to...
A graphical model is a graph that represents a set of conditional independence relations among the v...
Graphical Markov models use graphs, either undirected, directed, or mixed, to represent possible dep...
Abstract: From their inception, causal systems models (more commonly known as structural-equations m...
Graphical Markov models use graphs, either undirected, directed, or mixed, to represent possible dep...
Chain Graph Models (CGs) are a widely used tool to describe the conditional independence relationshi...
Abstract. This paper deals with different chain graph interpretations and the relations between them...
The Probabilistic Graphical Models use graphs in order to represent the joint distribution of q vari...
Acyclic directed mixed graphs (ADMGs) are the graphs used by Pearl (Causality: models, reasoning, an...
Statistical network models based on Pairwise Markov Random Fields (PMRFs) are popular tools for anal...
AbstractAs the Chain Event Graph (CEG) has a topology which represents sets of conditional independe...
<p>. Each of the nodes represents a subset of the measured phenotypes . The simplest interpretation...
We present a simple graphical theory unifying causal directed acyclic graphs (DAGs) and potential (a...