AbstractThe present paper introduces a new kind of representation for the potentials in a Bayesian network: Binary Probability Trees. They enable the representation of context-specific independences in more detail than probability trees. This enhanced capability leads to more efficient inference algorithms for some types of Bayesian networks. This paper explains the procedure for building a binary probability tree from a given potential, which is similar to the one employed for building standard probability trees. It also offers a way of pruning a binary tree in order to reduce its size. This allows us to obtain exact or approximate results in inference depending on an input threshold. This paper also provides detailed algorithms for perfor...
This paper describes a general scheme for accomodating different types of conditional distributions ...
The general problem of computing posterior probabilities in Bayesian networds is NP-hard (Cooper 199...
AbstractThis article presents and analyzes algorithms that systematically generate random Bayesian n...
AbstractThe present paper introduces a new kind of representation for the potentials in a Bayesian n...
The clique tree algorithm is the standard method for doing inference in Bayesian networks. It works ...
In this paper a new Monte-Carlo algorithm for the propagation of probabilities in Bayesian networks ...
We present an efficient procedure for factorising probabilistic potentials represented as probabilit...
We present Incremental Thin Junction Trees, a general framework for approximate inference in stati...
Abstract. Variable Elimination (VE) answers a query posed to a Bayesian network (BN) by manipulating...
Bayesian networks are graphical models whose nodes represent random variables and whose edges repres...
Bayesian networks provide a useful mechanism for encoding and reasoning about uncertainty. Recent pr...
A Bayesian network (BN) is a compact way to represent a joint probability distribution graphically. ...
When given a Bayesian network, a common use of it is calculating conditional probabilities. This is ...
Computation of marginal probabilities in Bayesian Belief Networks is central to many probabilistic r...
Probability is a useful tool for reasoning when faced with uncertainty. Bayesian networks offer a co...
This paper describes a general scheme for accomodating different types of conditional distributions ...
The general problem of computing posterior probabilities in Bayesian networds is NP-hard (Cooper 199...
AbstractThis article presents and analyzes algorithms that systematically generate random Bayesian n...
AbstractThe present paper introduces a new kind of representation for the potentials in a Bayesian n...
The clique tree algorithm is the standard method for doing inference in Bayesian networks. It works ...
In this paper a new Monte-Carlo algorithm for the propagation of probabilities in Bayesian networks ...
We present an efficient procedure for factorising probabilistic potentials represented as probabilit...
We present Incremental Thin Junction Trees, a general framework for approximate inference in stati...
Abstract. Variable Elimination (VE) answers a query posed to a Bayesian network (BN) by manipulating...
Bayesian networks are graphical models whose nodes represent random variables and whose edges repres...
Bayesian networks provide a useful mechanism for encoding and reasoning about uncertainty. Recent pr...
A Bayesian network (BN) is a compact way to represent a joint probability distribution graphically. ...
When given a Bayesian network, a common use of it is calculating conditional probabilities. This is ...
Computation of marginal probabilities in Bayesian Belief Networks is central to many probabilistic r...
Probability is a useful tool for reasoning when faced with uncertainty. Bayesian networks offer a co...
This paper describes a general scheme for accomodating different types of conditional distributions ...
The general problem of computing posterior probabilities in Bayesian networds is NP-hard (Cooper 199...
AbstractThis article presents and analyzes algorithms that systematically generate random Bayesian n...