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 wel...
Probabilistic graphical models offer a powerful framework to account for the dependence structure be...
This section investigates graphical modeling as a powerful framework for drawing inferences under im...
Inference is a central problem in probabilistic graphical models, and is often the main sub-step in ...
Probabilistic graphical models (PGMs) provide a compact representation of knowledge that can be quer...
Probability theory provides a mathematically rigorous yet conceptually flexible calculus of uncertai...
Probability theory provides a mathematically rigorous yet conceptually flexible calculus of uncertai...
Probabilistic graphical models provide a natural framework for the representation of complex systems...
Probabilistic graphical models have been successfully applied to a wide variety of fields such as co...
Unsupervised learning of graphical models is an important task in many domains. Although maximum lik...
The research reported in this thesis focuses on approximation techniques for inference in graphical ...
Probabilistic graphical models are ubiquitous tools for reasoning under uncertainty that have been u...
Probabilistic graphical models constitute a fundamental tool for the development of intelligent sys...
Exact inference on probabilistic graphical models quickly becomes intractable when the dimension of ...
Traditional approaches to probabilistic inference, such as loopy belief propagation and Gibbs sampli...
Bayesian structure learning allows one to capture uncertainty over the causal directed acyclic graph...
Probabilistic graphical models offer a powerful framework to account for the dependence structure be...
This section investigates graphical modeling as a powerful framework for drawing inferences under im...
Inference is a central problem in probabilistic graphical models, and is often the main sub-step in ...
Probabilistic graphical models (PGMs) provide a compact representation of knowledge that can be quer...
Probability theory provides a mathematically rigorous yet conceptually flexible calculus of uncertai...
Probability theory provides a mathematically rigorous yet conceptually flexible calculus of uncertai...
Probabilistic graphical models provide a natural framework for the representation of complex systems...
Probabilistic graphical models have been successfully applied to a wide variety of fields such as co...
Unsupervised learning of graphical models is an important task in many domains. Although maximum lik...
The research reported in this thesis focuses on approximation techniques for inference in graphical ...
Probabilistic graphical models are ubiquitous tools for reasoning under uncertainty that have been u...
Probabilistic graphical models constitute a fundamental tool for the development of intelligent sys...
Exact inference on probabilistic graphical models quickly becomes intractable when the dimension of ...
Traditional approaches to probabilistic inference, such as loopy belief propagation and Gibbs sampli...
Bayesian structure learning allows one to capture uncertainty over the causal directed acyclic graph...
Probabilistic graphical models offer a powerful framework to account for the dependence structure be...
This section investigates graphical modeling as a powerful framework for drawing inferences under im...
Inference is a central problem in probabilistic graphical models, and is often the main sub-step in ...