Mixed probabilistic and deterministic graphical models are ubiquitous in real-world applications. Unfortunately, Gibbs sampling, a popular MCMC technique, does not converge to the correct answers in presence of determinism and therefore cannot be used for inference in such models. In this paper, we propose to remedy this problem by combining Gibbs sampling with SampleSearch, an advanced importance sampling technique which leverages complete SAT/CSP solvers to generate high quality samples from hard deterministic spaces. We call the resulting algorithm, GiSS. Unlike Gibbs sampling which yields unweighted samples, GiSS yields weighted samples. Computing these weights exactly can be computationally expensive and therefore we propose several ap...
What is the "best" model? The answer to this question lies in part in the eyes of the beholder, neve...
We introduce a methodology for performing approximate computations in very complex probabilistic sy...
First-order probabilistic models combine the power of first-order logic, the de facto tool for handl...
Mixed probabilistic and deterministic graphical models are ubiquitous in real-world applications. Un...
AbstractThe paper focuses on developing effective importance sampling algorithms for mixed probabili...
Inference is a central problem in probabilistic graphical models, and is often the main sub-step in ...
Statistical inference is at the heart of the probabilistic programming approach to artificial intell...
Many real-world Bayesian inference problems such as preference learning or trader valuation modeling...
Probabilistic inference in many real-world problems requires graphical models with deterministic alg...
In this paper, we investigate combining blocking and collapsing - two widely used strategies for imp...
Computing expectations in high-dimensional spaces is a key challenge in probabilistic infer-ence and...
The Gibbs sampler is one of the most popular algorithms for inference in statistical models. In this...
The Gibbs sampler is one of the most popular algorithms for inference in statistical models. In this...
Abstract I present a simple variation of importance sampling that explicitly search-es for important...
There is currently a large interest in probabilistic logical models. A popular algorithm for approxi...
What is the "best" model? The answer to this question lies in part in the eyes of the beholder, neve...
We introduce a methodology for performing approximate computations in very complex probabilistic sy...
First-order probabilistic models combine the power of first-order logic, the de facto tool for handl...
Mixed probabilistic and deterministic graphical models are ubiquitous in real-world applications. Un...
AbstractThe paper focuses on developing effective importance sampling algorithms for mixed probabili...
Inference is a central problem in probabilistic graphical models, and is often the main sub-step in ...
Statistical inference is at the heart of the probabilistic programming approach to artificial intell...
Many real-world Bayesian inference problems such as preference learning or trader valuation modeling...
Probabilistic inference in many real-world problems requires graphical models with deterministic alg...
In this paper, we investigate combining blocking and collapsing - two widely used strategies for imp...
Computing expectations in high-dimensional spaces is a key challenge in probabilistic infer-ence and...
The Gibbs sampler is one of the most popular algorithms for inference in statistical models. In this...
The Gibbs sampler is one of the most popular algorithms for inference in statistical models. In this...
Abstract I present a simple variation of importance sampling that explicitly search-es for important...
There is currently a large interest in probabilistic logical models. A popular algorithm for approxi...
What is the "best" model? The answer to this question lies in part in the eyes of the beholder, neve...
We introduce a methodology for performing approximate computations in very complex probabilistic sy...
First-order probabilistic models combine the power of first-order logic, the de facto tool for handl...