Causal interaction models, such as the well-known noisy-or and leaky noisy-or models, have become quite popular as a means to parameterize conditional probability tables for Bayesian networks. In this paper we focus on the engineering of subnetworks to represent such models and present a novel technique called recursive unfolding for this purpose. This technique allows inserting, removing and merging cause variables in an interaction model at will, without affecting the underlying represented information. We detail the technique, with the recursion invariants involved, and illustrate its practical use for Bayesian-network engineering by means of a small example
AbstractIn designing a Bayesian network for an actual problem, developers need to bridge the gap bet...
In designing a Bayesian network for an actual problem, developers need to bridge the gap between th...
The Recursive Bayesian Net formalism was originally developed for modelling nested causal relationsh...
Causal interaction models, such as the well-known noisy-or and leaky noisy-or models, have become qu...
Causal interaction models such as the noisy-or model, are used in Bayesian networks to simplify prob...
When constructing Bayesian networks with domain experts, network engineers often use the noisy-OR mo...
Probabilistic causal interaction models have become quite popular among Bayesian-network engineers a...
Whereas acausal Bayesian networks represent probabilistic independence, causal Bayesian networks rep...
Mechanistic philosophy of science views a large part of scientific activity as engaged in modelling ...
A new method is proposed for exploiting causal independencies in exact Bayesian network inference. A...
The Recursive Bayesian Net (RBN) formalism was originally developed for modelling nested causal rela...
The Recursive Bayesian Net (RBN) formalism was originally developed for modelling nested causal rela...
ABSTRACT: The Recursive Bayesian Net (RBN) formalism was originally developed for modelling nested c...
The Recursive Bayesian Net (RBN) formalism was originally developed for modelling nested causal rela...
AbstractTo specify a Bayesian network (BN), a conditional probability table (CPT), often of an effec...
AbstractIn designing a Bayesian network for an actual problem, developers need to bridge the gap bet...
In designing a Bayesian network for an actual problem, developers need to bridge the gap between th...
The Recursive Bayesian Net formalism was originally developed for modelling nested causal relationsh...
Causal interaction models, such as the well-known noisy-or and leaky noisy-or models, have become qu...
Causal interaction models such as the noisy-or model, are used in Bayesian networks to simplify prob...
When constructing Bayesian networks with domain experts, network engineers often use the noisy-OR mo...
Probabilistic causal interaction models have become quite popular among Bayesian-network engineers a...
Whereas acausal Bayesian networks represent probabilistic independence, causal Bayesian networks rep...
Mechanistic philosophy of science views a large part of scientific activity as engaged in modelling ...
A new method is proposed for exploiting causal independencies in exact Bayesian network inference. A...
The Recursive Bayesian Net (RBN) formalism was originally developed for modelling nested causal rela...
The Recursive Bayesian Net (RBN) formalism was originally developed for modelling nested causal rela...
ABSTRACT: The Recursive Bayesian Net (RBN) formalism was originally developed for modelling nested c...
The Recursive Bayesian Net (RBN) formalism was originally developed for modelling nested causal rela...
AbstractTo specify a Bayesian network (BN), a conditional probability table (CPT), often of an effec...
AbstractIn designing a Bayesian network for an actual problem, developers need to bridge the gap bet...
In designing a Bayesian network for an actual problem, developers need to bridge the gap between th...
The Recursive Bayesian Net formalism was originally developed for modelling nested causal relationsh...