AbstractGraphs provide an excellent framework for interrogating symmetric models of measurement random variables and discovering their implied conditional independence structure. However, it is not unusual for a model to be specified from a description of how a process unfolds (i.e. via its event tree), rather than through relationships between a given set of measurements. Here we introduce a new mixed graphical structure called the chain event graph that is a function of this event tree and a set of elicited equivalence relationships. This graph is more expressive and flexible than either the Bayesian network—equivalent in the symmetric case—or the probability decision graph. Various separation theorems are proved for the chain event graph...
Bayesian networks constitute a qualitative representation for conditional independence (CI) properti...
Probabilistic graphical models, such as Bayesian networks, allow representing conditional independen...
In this article we study the expressiveness of the different chain graph interpretations. Chain grap...
Graphs provide an excellent framework for interrogating symmetric models of measurement random. vari...
AbstractGraphs provide an excellent framework for interrogating symmetric models of measurement rand...
The paper gives a few arguments in favour of use of chain graphs for description of probabilistic co...
In this paper we study conditional independence structures arising from conditional probabilities an...
Bayesian networks (BNs) are useful for coding conditional independence statements between a given se...
Bayesian networks (BNs) are useful for coding conditional independence statements, especially in dis...
AbstractAs the Chain Event Graph (CEG) has a topology which represents sets of conditional independe...
As the Chain Event Graph (CEG) has a topology which represents sets of conditional independence stat...
In this paper we study how different theoretical concepts of Bayesian networks have been extended to...
Chain graphs (CGs) give a natural unifying point of view on Markov and Bayesian networks and enlarge...
A set of independence statements may define the independence structure of interest in a family of jo...
Probabilistic graphical models are today one of the most well used architectures for modelling and r...
Bayesian networks constitute a qualitative representation for conditional independence (CI) properti...
Probabilistic graphical models, such as Bayesian networks, allow representing conditional independen...
In this article we study the expressiveness of the different chain graph interpretations. Chain grap...
Graphs provide an excellent framework for interrogating symmetric models of measurement random. vari...
AbstractGraphs provide an excellent framework for interrogating symmetric models of measurement rand...
The paper gives a few arguments in favour of use of chain graphs for description of probabilistic co...
In this paper we study conditional independence structures arising from conditional probabilities an...
Bayesian networks (BNs) are useful for coding conditional independence statements between a given se...
Bayesian networks (BNs) are useful for coding conditional independence statements, especially in dis...
AbstractAs the Chain Event Graph (CEG) has a topology which represents sets of conditional independe...
As the Chain Event Graph (CEG) has a topology which represents sets of conditional independence stat...
In this paper we study how different theoretical concepts of Bayesian networks have been extended to...
Chain graphs (CGs) give a natural unifying point of view on Markov and Bayesian networks and enlarge...
A set of independence statements may define the independence structure of interest in a family of jo...
Probabilistic graphical models are today one of the most well used architectures for modelling and r...
Bayesian networks constitute a qualitative representation for conditional independence (CI) properti...
Probabilistic graphical models, such as Bayesian networks, allow representing conditional independen...
In this article we study the expressiveness of the different chain graph interpretations. Chain grap...