We examine the inferential complexity of Bayesian networks specified through logical constructs. We first consider simple propositional languages, and then move to relational languages. We examine both the combined complexity of inference (as network size and evidence size are not bounded) and the data complexity of inference (where network size is bounded); we also examine the connection to liftability through domain complexity. Combined and data complexity of several inference problems are presented, ranging from polynomial to exponential classes
Bayesian networks provide an elegant formalism for representing and reasoning about uncertainty usin...
We describe in this paper a system for exact inference with relational Bayesian networks as defined ...
AbstractWe describe in this paper a system for exact inference with relational Bayesian networks as ...
We study the computational complexity of finding maximum a posteriori configurations in Bayesian net...
We investigate the complexity of probabilistic inference from knowledge bases that encode probabilit...
We investigate the complexity of probabilistic inference from knowledge bases that encode probabilit...
AbstractWe investigate the complexity of probabilistic inference from knowledge bases that encode pr...
\u3cp\u3eCredal networks are graph-based statistical models whose parameters take values in a set, i...
We investigate the complexity of probabilistic inference from knowledge bases that encode probabil...
This paper investigates a representation language with flexibility inspired by probabilistic logic a...
Udgivelsesdato: MAYWe describe in this paper a system for exact inference with relational Bayesian n...
We describe in this paper a system for exact inference with relational Bayesian networks as defined ...
Credal networks are graph-based statistical models whose parameters take values in a set, instead of...
We present completeness results for inference in Bayesian networks with respect to two different par...
AbstractWe investigate the complexity of probabilistic inference from knowledge bases that encode pr...
Bayesian networks provide an elegant formalism for representing and reasoning about uncertainty usin...
We describe in this paper a system for exact inference with relational Bayesian networks as defined ...
AbstractWe describe in this paper a system for exact inference with relational Bayesian networks as ...
We study the computational complexity of finding maximum a posteriori configurations in Bayesian net...
We investigate the complexity of probabilistic inference from knowledge bases that encode probabilit...
We investigate the complexity of probabilistic inference from knowledge bases that encode probabilit...
AbstractWe investigate the complexity of probabilistic inference from knowledge bases that encode pr...
\u3cp\u3eCredal networks are graph-based statistical models whose parameters take values in a set, i...
We investigate the complexity of probabilistic inference from knowledge bases that encode probabil...
This paper investigates a representation language with flexibility inspired by probabilistic logic a...
Udgivelsesdato: MAYWe describe in this paper a system for exact inference with relational Bayesian n...
We describe in this paper a system for exact inference with relational Bayesian networks as defined ...
Credal networks are graph-based statistical models whose parameters take values in a set, instead of...
We present completeness results for inference in Bayesian networks with respect to two different par...
AbstractWe investigate the complexity of probabilistic inference from knowledge bases that encode pr...
Bayesian networks provide an elegant formalism for representing and reasoning about uncertainty usin...
We describe in this paper a system for exact inference with relational Bayesian networks as defined ...
AbstractWe describe in this paper a system for exact inference with relational Bayesian networks as ...