Contains fulltext : 160422.pdf (publisher's version ) (Open Access)Computing posterior and marginal probabilities constitutes the backbone of almost all inferences in Bayesian networks. These computations are known to be intractable in general, both to compute exactly and to approximate by sampling algorithms. While it is well known under what constraints exact computation can be rendered tractable (viz., bounding tree-width of the moralized network and bounding the cardinality of the variables) it is less known under what constraints approximate Bayesian inference can be tractable. Here, we use the formal framework of fixed-error randomized tractability (a randomized analogue of fixed-parameter tractability) to address th...
We present completeness results for inference in Bayesian networks with respect to two different par...
In this paper, we consider the problem of performing inference on Bayesian networks which exhibit a ...
Computation of marginal probabilities in Bayesian Belief Networks is central to many probabilistic r...
Contains fulltext : 182072.pdf (publisher's version ) (Closed access)Computing pos...
Computing posterior and marginal probabilities constitutes the backbone of almost all inferences in ...
We present completeness results for inference in Bayesian networks with respect to two different par...
Approximating the inference probability Pr[X = xjE = e] in any sense, even for a single evidence nod...
We present completeness results for inference in Bayesian networks with respect to two different par...
AbstractApproximating the inference probability Pr[X = x | E = e] in any sense, even for a single ev...
AbstractOne of the key computational problems in Bayesian networks is computing the maximal posterio...
Bayesian inference plays an important role in phylogenetics, evolutionary biology, and in many other...
We present a unifying framework for exact and approximate inference in Bayesian networks. This frame...
A Bayesian network can be used to model consisely the probabilistic knowledge with respect to a give...
Bayesian statistics provides a principled framework for performing statistical inference for an unkn...
Bayesian networks provide a useful mechanism for encoding and reasoning about uncertainty. Recent pr...
We present completeness results for inference in Bayesian networks with respect to two different par...
In this paper, we consider the problem of performing inference on Bayesian networks which exhibit a ...
Computation of marginal probabilities in Bayesian Belief Networks is central to many probabilistic r...
Contains fulltext : 182072.pdf (publisher's version ) (Closed access)Computing pos...
Computing posterior and marginal probabilities constitutes the backbone of almost all inferences in ...
We present completeness results for inference in Bayesian networks with respect to two different par...
Approximating the inference probability Pr[X = xjE = e] in any sense, even for a single evidence nod...
We present completeness results for inference in Bayesian networks with respect to two different par...
AbstractApproximating the inference probability Pr[X = x | E = e] in any sense, even for a single ev...
AbstractOne of the key computational problems in Bayesian networks is computing the maximal posterio...
Bayesian inference plays an important role in phylogenetics, evolutionary biology, and in many other...
We present a unifying framework for exact and approximate inference in Bayesian networks. This frame...
A Bayesian network can be used to model consisely the probabilistic knowledge with respect to a give...
Bayesian statistics provides a principled framework for performing statistical inference for an unkn...
Bayesian networks provide a useful mechanism for encoding and reasoning about uncertainty. Recent pr...
We present completeness results for inference in Bayesian networks with respect to two different par...
In this paper, we consider the problem of performing inference on Bayesian networks which exhibit a ...
Computation of marginal probabilities in Bayesian Belief Networks is central to many probabilistic r...