Query-Specific Learning and Inference for Probabilistic Graphical Models (2011)
BibTeX
@MISC{Chechetka11query-specificlearning,
author = {Anton Chechetka and J. Andrew Bagnell and Eric Xing},
title = {Query-Specific Learning and Inference for Probabilistic Graphical Models},
year = {2011}
}
OpenURL
Abstract
for the degree of Doctor of Philosophy. In numerous real world applications, from sensor networks to computer vision to natural text processing, one needs to reason about the system in question in the face of uncertainty. A key problem in all those settings is to compute the probability distribution over the variables of interest (the query) given the observed values of other random variables (the evidence). Probabilistic graphical models (PGMs) have become the approach of choice for representing and reasoning with high-dimensional probability distributions. However, for most models capable of accurately representing real-life distributions, inference is fundamentally intractable. As a result, optimally balancing the expressive power and inference complexity of the models, as well as designing better approximate inference algorithms, remain important open problems with potential to significantly improve the quality of answers to probabilistic queries. This thesis contributes algorithms for learning and approximate inference in probabilistic graphical models that improve on the state of the art by emphasizing the computational aspects of inference over the representational properties of the models. Our contributions fall







