AbstractChain event graphs are graphical models that while retaining most of the structural advantages of Bayesian networks for model interrogation, propagation and learning, more naturally encode asymmetric state spaces and the order in which events happen than Bayesian networks do. In addition, the class of models that can be represented by chain event graphs for a finite set of discrete variables is a strict superset of the class that can be described by Bayesian networks. In this paper we demonstrate how with complete sampling, conjugate closed form model selection based on product Dirichlet priors is possible, and prove that suitable homogeneity assumptions characterise the product Dirichlet prior on this class of models. We demonstrat...
The search for a useful explanatory model based on a Bayesian Network (BN) now has a long and succes...
Chain Event Graphs (CEGs) are a rich and provenly useful class of graphical models. The class contai...
AbstractThe search for a useful explanatory model based on a Bayesian Network (BN) now has a long an...
The class of chain event graph models is a generalisation of the class of discrete Bayesian networks...
AbstractChain event graphs are graphical models that while retaining most of the structural advantag...
Chain event graphs are a family of probabilistic graphical models that generalise Bayesian networks ...
Bayesian networks (BNs) are useful for coding conditional independence statements between a given se...
When looking for general structure from a finite discrete data set one can search over the class of ...
We introduce a subclass of chain event graphs that we call stratified chain event graphs, and presen...
Chain Event Graphs (CEGs) are an easily interpretable, versatile class of probabilistic graphical mo...
Bayesian networks (BNs) are useful for coding conditional independence statements, especially in dis...
Discrete Bayesian Networks (BNs) have been very successful as a framework both for inference and fo...
AbstractGraphs provide an excellent framework for interrogating symmetric models of measurement rand...
The Chain Event Graph (CEG) is a type of tree-based graphical model that accommodates all discrete B...
In this paper we develop a formal dynamic version of Chain Event Graphs (CEGs), a particularly expre...
The search for a useful explanatory model based on a Bayesian Network (BN) now has a long and succes...
Chain Event Graphs (CEGs) are a rich and provenly useful class of graphical models. The class contai...
AbstractThe search for a useful explanatory model based on a Bayesian Network (BN) now has a long an...
The class of chain event graph models is a generalisation of the class of discrete Bayesian networks...
AbstractChain event graphs are graphical models that while retaining most of the structural advantag...
Chain event graphs are a family of probabilistic graphical models that generalise Bayesian networks ...
Bayesian networks (BNs) are useful for coding conditional independence statements between a given se...
When looking for general structure from a finite discrete data set one can search over the class of ...
We introduce a subclass of chain event graphs that we call stratified chain event graphs, and presen...
Chain Event Graphs (CEGs) are an easily interpretable, versatile class of probabilistic graphical mo...
Bayesian networks (BNs) are useful for coding conditional independence statements, especially in dis...
Discrete Bayesian Networks (BNs) have been very successful as a framework both for inference and fo...
AbstractGraphs provide an excellent framework for interrogating symmetric models of measurement rand...
The Chain Event Graph (CEG) is a type of tree-based graphical model that accommodates all discrete B...
In this paper we develop a formal dynamic version of Chain Event Graphs (CEGs), a particularly expre...
The search for a useful explanatory model based on a Bayesian Network (BN) now has a long and succes...
Chain Event Graphs (CEGs) are a rich and provenly useful class of graphical models. The class contai...
AbstractThe search for a useful explanatory model based on a Bayesian Network (BN) now has a long an...