In this paper, we use evidence-specific value abstraction for speeding Bayesian networks inference. This is done by grouping variable values and treating the combined values as a single entity. As we show, such abstractions can exploit regularities in conditional probability distributions and also the specific values of observed variables. To formally justify value abstraction, we define the notion of safe value abstraction and devise inference algorithms that use it to reduce the cost of inference. Our procedure is particularly useful for learning complex networks with many hidden variables. In such cases, repeated likelihood computations are required for EM or other parameter optimization techniques. Since these computations are repeated ...
Constraints occur in many application areas of interest to evolutionary computation. The area consi...
We present a unifying framework for exact and approximate inference in Bayesian networks. This frame...
This report introduces a novel approach to performing inference and learning inDynamic Bayesian Netw...
210 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 1999.Two major research results ar...
AbstractA number of exact algorithms have been developed in recent years to perform probabilistic in...
Probability is a useful tool for reasoning when faced with uncertainty. Bayesian networks offer a co...
Factor graphs provide a convenient framework for automatically generating (approximate) Bayesian inf...
AbstractAbductive inference in Bayesian belief networks (BBN) is intended as the process of generati...
Bayesian networks provide a useful mechanism for encoding and reasoning about uncertainty. Recent pr...
AbstractWe present an extension of Bayesian networks to probability intervals, aiming at a more real...
A reliable modeling of uncertain evidence in Bayesian networks based on a set-valued quantification...
The expectation maximization (EM) algorithm is a popular algorithm for parameter estimation in model...
In Chapter 2 it is shown that the marginal distribution of plausible values is a consistent estimato...
Many problems require repeated inference on probabilistic graphical models, with different values fo...
Probabilistic inference in Bayesian networks, and even reasoning within error bounds are known to be...
Constraints occur in many application areas of interest to evolutionary computation. The area consi...
We present a unifying framework for exact and approximate inference in Bayesian networks. This frame...
This report introduces a novel approach to performing inference and learning inDynamic Bayesian Netw...
210 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 1999.Two major research results ar...
AbstractA number of exact algorithms have been developed in recent years to perform probabilistic in...
Probability is a useful tool for reasoning when faced with uncertainty. Bayesian networks offer a co...
Factor graphs provide a convenient framework for automatically generating (approximate) Bayesian inf...
AbstractAbductive inference in Bayesian belief networks (BBN) is intended as the process of generati...
Bayesian networks provide a useful mechanism for encoding and reasoning about uncertainty. Recent pr...
AbstractWe present an extension of Bayesian networks to probability intervals, aiming at a more real...
A reliable modeling of uncertain evidence in Bayesian networks based on a set-valued quantification...
The expectation maximization (EM) algorithm is a popular algorithm for parameter estimation in model...
In Chapter 2 it is shown that the marginal distribution of plausible values is a consistent estimato...
Many problems require repeated inference on probabilistic graphical models, with different values fo...
Probabilistic inference in Bayesian networks, and even reasoning within error bounds are known to be...
Constraints occur in many application areas of interest to evolutionary computation. The area consi...
We present a unifying framework for exact and approximate inference in Bayesian networks. This frame...
This report introduces a novel approach to performing inference and learning inDynamic Bayesian Netw...