Bayesiannetworks provide a languagefor qualitatively representing the conditional independence properties of a distribution. This allows a natural and compact representation of the distribution, eases knowledge acquisition, and supports effective inference algorithms. It is well-known, however, that there are certain independencies that we cannot capture qualitatively within the Bayesian network structure: independencies that hold only in certain contexts, i.e., given a specific assignment of values to certain variables. In this paper, we propose a formal notion of context-specific independence (CSI), based on regularities in the conditional probability tables (CPTs) at a node. We present a technique, analogous to (and based on) d-separati...
Previous algorithms for the construction of Bayesian belief network structures from data have been e...
It is well known that conditional independence can be used to factorize a joint probability into a m...
The general problem of computing posterior probabilities in Bayesian networds is NP-hard (Cooper 199...
Three kinds of independence are of interest in the context of Bayesian networks, namely conditional ...
Bayesian networks constitute a qualitative representation for conditional independence (CI) properti...
Three kinds of independence are of interest in the context of Bayesian networks, namely conditional ...
Three kinds of independence are of interest in the context of Bayesian networks, namely conditional ...
Context-specific independence (CSI) refers to conditional independencies that are true only in speci...
Bayesian belief networks have grown to prominence because they provide compact representations for m...
. Previous algorithms for the recovery of Bayesian belief network structures from data have been eit...
Context specific independence can provide compact representation of the conditional probabilities i...
The structure of a Bayesian network (BN) encodes variable independence. Learning the structure of a ...
Recently there has been some evidence that the numbers in probabilistic inference don't really ...
The rules of d-separation provide a theoretical and algorithmic framework for deriving conditional i...
A new method is proposed for exploiting causal independencies in exact Bayesian network inference. A...
Previous algorithms for the construction of Bayesian belief network structures from data have been e...
It is well known that conditional independence can be used to factorize a joint probability into a m...
The general problem of computing posterior probabilities in Bayesian networds is NP-hard (Cooper 199...
Three kinds of independence are of interest in the context of Bayesian networks, namely conditional ...
Bayesian networks constitute a qualitative representation for conditional independence (CI) properti...
Three kinds of independence are of interest in the context of Bayesian networks, namely conditional ...
Three kinds of independence are of interest in the context of Bayesian networks, namely conditional ...
Context-specific independence (CSI) refers to conditional independencies that are true only in speci...
Bayesian belief networks have grown to prominence because they provide compact representations for m...
. Previous algorithms for the recovery of Bayesian belief network structures from data have been eit...
Context specific independence can provide compact representation of the conditional probabilities i...
The structure of a Bayesian network (BN) encodes variable independence. Learning the structure of a ...
Recently there has been some evidence that the numbers in probabilistic inference don't really ...
The rules of d-separation provide a theoretical and algorithmic framework for deriving conditional i...
A new method is proposed for exploiting causal independencies in exact Bayesian network inference. A...
Previous algorithms for the construction of Bayesian belief network structures from data have been e...
It is well known that conditional independence can be used to factorize a joint probability into a m...
The general problem of computing posterior probabilities in Bayesian networds is NP-hard (Cooper 199...