Drawing a sample from a discrete distribution is one of the building components for Monte Carlo methods. Like other sampling algorithms, discrete sampling suffers from the high computational burden in large-scale inference problems. We study the problem of sampling a discrete random variable with a high degree of dependency that is typical in large-scale Bayesian inference and graphical models, and propose an efficient approximate solution with a subsampling approach. We make a novel connection between the discrete sampling and Multi-Armed Bandits problems with a finite reward population and provide three algorithms with theoretical guarantees. Empirical evaluations show the robustness and efficiency of the approximate algorithms in both sy...
International audienceWe consider the problem of stratified sampling for Monte-Carlo integration. We...
We consider the problem of stratied sampling for Monte-Carlo integration. We model this problem in a...
We consider a bandit problem which involves sequential sampling from two populations (arms). Each ar...
Drawing a sample from a discrete distribution is one of the building components for Monte Carlo meth...
International audienceThe stochastic multi-armed bandit problem is a popular model of the exploratio...
International audienceThis paper considers the problem of maximizing an expectation function over a ...
We consider the problem of selecting, from among the arms of a stochastic n-armed bandit, a subset o...
This paper considers the use of a simple posterior sampling algorithm to balance between exploration...
Published version of an article from Lecture Notes in Computer Science. Also available at SpringerLi...
We propose a Monte Carlo algorithm to sample from high dimensional probability distributions that co...
We consider the problem of sampling from a discrete proba-bility distribution specified by a graphic...
We introduce a methodology for performing approximate computations in very complex probabilistic sy...
<p>We introduce the Hamming ball sampler, a novel Markov chain Monte Carlo algorithm, for efficient ...
International audienceMarkov chain Monte Carlo (MCMC) methods are an important class of computation ...
Bayesian approach for inference has become one of the central interests in statistical inference, du...
International audienceWe consider the problem of stratified sampling for Monte-Carlo integration. We...
We consider the problem of stratied sampling for Monte-Carlo integration. We model this problem in a...
We consider a bandit problem which involves sequential sampling from two populations (arms). Each ar...
Drawing a sample from a discrete distribution is one of the building components for Monte Carlo meth...
International audienceThe stochastic multi-armed bandit problem is a popular model of the exploratio...
International audienceThis paper considers the problem of maximizing an expectation function over a ...
We consider the problem of selecting, from among the arms of a stochastic n-armed bandit, a subset o...
This paper considers the use of a simple posterior sampling algorithm to balance between exploration...
Published version of an article from Lecture Notes in Computer Science. Also available at SpringerLi...
We propose a Monte Carlo algorithm to sample from high dimensional probability distributions that co...
We consider the problem of sampling from a discrete proba-bility distribution specified by a graphic...
We introduce a methodology for performing approximate computations in very complex probabilistic sy...
<p>We introduce the Hamming ball sampler, a novel Markov chain Monte Carlo algorithm, for efficient ...
International audienceMarkov chain Monte Carlo (MCMC) methods are an important class of computation ...
Bayesian approach for inference has become one of the central interests in statistical inference, du...
International audienceWe consider the problem of stratified sampling for Monte-Carlo integration. We...
We consider the problem of stratied sampling for Monte-Carlo integration. We model this problem in a...
We consider a bandit problem which involves sequential sampling from two populations (arms). Each ar...