We study two-layer belief networks of binary random variables in which the conditional probabilities Pr[childjparents] depend monotonically on weighted sums of the parents. In large networks where exact probabilistic inference is intractable, we show how to compute upper and lower bounds on many probabilities of interest. In particular, using methods from large deviation theory, we derive rigorous bounds on marginal probabilities such asPr[children] and prove rates of convergence for the accuracy of our bounds as a function of network size. Our results apply to networks with generic transfer function parameterizations of the conditional probability tables, such as sigmoid and noisy-OR. They also explicitly illustrate the types of averaging ...
Exact inference in large, densely connected probabilistic networks is computa-tionally intractable, ...
In Chapter 2 it is shown that the marginal distribution of plausible values is a consistent estimato...
The research reported in this thesis focuses on approximation techniques for inference in graphical ...
We study probabilistic inference in large, layered Bayesian networks represented as directed acyclic...
This paper studies probabilistic rates of convergence for consensus+innovations type of algorithms i...
Approximating the inference probability Pr[X = xjE = e] in any sense, even for a single evidence nod...
AbstractApproximating the inference probability Pr[X = x | E = e] in any sense, even for a single ev...
Computation of marginal probabilities in Bayesian Belief Networks is central to many probabilistic r...
We present an analysis of concentration-of-expectation phenomena in layered Bayesian networks that ...
AbstractProbabilistic inference and maximum a posteriori (MAP) explanation are two important and rel...
We present techniques for computing upper and lower bounds on the likelihoods of partial instantiati...
In this paper we examine the problem of inference in Bayesian Networks with discrete random variab...
Computing marginal probabilities in Bayes networks is a hard problem. Deterministic anytime approxim...
This paper describes a general scheme for accomodating different types of conditional distributions ...
AbstractComputing marginal probabilities in Bayes networks is a hard problem. Deterministic anytime ...
Exact inference in large, densely connected probabilistic networks is computa-tionally intractable, ...
In Chapter 2 it is shown that the marginal distribution of plausible values is a consistent estimato...
The research reported in this thesis focuses on approximation techniques for inference in graphical ...
We study probabilistic inference in large, layered Bayesian networks represented as directed acyclic...
This paper studies probabilistic rates of convergence for consensus+innovations type of algorithms i...
Approximating the inference probability Pr[X = xjE = e] in any sense, even for a single evidence nod...
AbstractApproximating the inference probability Pr[X = x | E = e] in any sense, even for a single ev...
Computation of marginal probabilities in Bayesian Belief Networks is central to many probabilistic r...
We present an analysis of concentration-of-expectation phenomena in layered Bayesian networks that ...
AbstractProbabilistic inference and maximum a posteriori (MAP) explanation are two important and rel...
We present techniques for computing upper and lower bounds on the likelihoods of partial instantiati...
In this paper we examine the problem of inference in Bayesian Networks with discrete random variab...
Computing marginal probabilities in Bayes networks is a hard problem. Deterministic anytime approxim...
This paper describes a general scheme for accomodating different types of conditional distributions ...
AbstractComputing marginal probabilities in Bayes networks is a hard problem. Deterministic anytime ...
Exact inference in large, densely connected probabilistic networks is computa-tionally intractable, ...
In Chapter 2 it is shown that the marginal distribution of plausible values is a consistent estimato...
The research reported in this thesis focuses on approximation techniques for inference in graphical ...