AbstractIn the construction of a Bayesian network, it is always assumed that the variables starting from the same parent are conditionally independent. In practice, this assumption may not hold, and will give rise to incorrect inferences. In cases where some dependency is found between variables, we propose that the creation of a hidden node, which in effect models the dependency, can solve the problem. In order to determine the conditional probability matrices for the hidden node, we use a gradient descent method. The objective function to be minimised is the squared-error between the measured and computed values of the instantiated nodes. Both forward and backward propagation are used to compute the node probabilities. The error gradients...
. Previous algorithms for the recovery of Bayesian belief network structures from data have been eit...
A Bayesian network (BN) [14, 19] is a combination of: • directed graph (DAG) G = (V, E), in which ea...
Includes bibliographical references (page 48).San Diego State University copy: the accompanying CD-R...
In the construction of a Bayesian network f fom observed data, the findamental assumption that the v...
. Probabilistic networks (also known as Bayesian belief networks) allow a compact description of com...
The conditional independence assumption of naive Bayes essentially ignores attribute dependencies an...
Bayesian networks are constructed under a con-ditional independency assumption. This assump-tion how...
While there has been a growing interest in the problem of learning Bayesian networks from data, no t...
The efficiency of algorithms using secondary structures for probabilistic inference in Bayesian netw...
This paper describes a general scheme for accomodating different types of conditional distributions ...
Bayesian networks are graphical models whose nodes represent random variables and whose edges repres...
The general problem of computing posterior probabilities in Bayesian networds is NP-hard (Cooper 199...
This paper addresses the problem of learning Bayesian network structures from data by using an infor...
Probability is a useful tool for reasoning when faced with uncertainty. Bayesian networks offer a co...
We propose a technique for increasing the efficiency of gradient-based inference and learning in Bay...
. Previous algorithms for the recovery of Bayesian belief network structures from data have been eit...
A Bayesian network (BN) [14, 19] is a combination of: • directed graph (DAG) G = (V, E), in which ea...
Includes bibliographical references (page 48).San Diego State University copy: the accompanying CD-R...
In the construction of a Bayesian network f fom observed data, the findamental assumption that the v...
. Probabilistic networks (also known as Bayesian belief networks) allow a compact description of com...
The conditional independence assumption of naive Bayes essentially ignores attribute dependencies an...
Bayesian networks are constructed under a con-ditional independency assumption. This assump-tion how...
While there has been a growing interest in the problem of learning Bayesian networks from data, no t...
The efficiency of algorithms using secondary structures for probabilistic inference in Bayesian netw...
This paper describes a general scheme for accomodating different types of conditional distributions ...
Bayesian networks are graphical models whose nodes represent random variables and whose edges repres...
The general problem of computing posterior probabilities in Bayesian networds is NP-hard (Cooper 199...
This paper addresses the problem of learning Bayesian network structures from data by using an infor...
Probability is a useful tool for reasoning when faced with uncertainty. Bayesian networks offer a co...
We propose a technique for increasing the efficiency of gradient-based inference and learning in Bay...
. Previous algorithms for the recovery of Bayesian belief network structures from data have been eit...
A Bayesian network (BN) [14, 19] is a combination of: • directed graph (DAG) G = (V, E), in which ea...
Includes bibliographical references (page 48).San Diego State University copy: the accompanying CD-R...