Control variates are a well-established tool to reduce the variance of Monte Carlo estimators. However, for large-scale problems including high-dimensional and large-sample settings, their advantages can be outweighed by a substantial computational cost. This paper considers control variates based on Stein operators, presenting a framework that encompasses and generalizes existing approaches that use polynomials, kernels and neural networks. A learning strategy based on minimising a variational objective through stochastic optimization is proposed, leading to scalable and effective control variates. Novel theoretical results are presented to provide insight into the variance reduction that can be achieved, and an empirical assessment, inclu...
Stochastic gradient MCMC (SGMCMC) offers a scalable alternative to traditional MCMC, by constructing...
International audienceMany pricing problems boil down to the computation of a high dimensional integ...
In this paper, control variates are proposed to speed up Monte Carlo Simulations to estimate expecte...
It is well known that Markov chain Monte Carlo (MCMC) methods scale poorly with dataset size. A popu...
A non‐parametric extension of control variates is presented. These leverage gradient information on ...
Stochastic gradient optimization is a class of widely used algorithms for training machine learning ...
Control variates are variance reduction tools for Monte Carlo estimators. They can provide significa...
<p>Stochastic gradient optimization is a class of widely used algorithms for training machine learni...
A novel control variate technique is proposed for post-processing of Markov chain Monte Carlo output...
Gradient information on the sampling distribution can be used to reduce the variance of Monte Carlo ...
© 2016 International Society for Bayesian Analysis. Many popular statistical models for complex phen...
Many popular statistical models for complex phenomena are intractable, in the sense that the likelih...
Many popular statistical models for complex phenomena areintractable, in the sense that the l...
Gradient information on the sampling distribution can be used to reduce the variance of Monte Carlo ...
International audienceWe study a variance reduction technique for Monte Carlo estimation of function...
Stochastic gradient MCMC (SGMCMC) offers a scalable alternative to traditional MCMC, by constructing...
International audienceMany pricing problems boil down to the computation of a high dimensional integ...
In this paper, control variates are proposed to speed up Monte Carlo Simulations to estimate expecte...
It is well known that Markov chain Monte Carlo (MCMC) methods scale poorly with dataset size. A popu...
A non‐parametric extension of control variates is presented. These leverage gradient information on ...
Stochastic gradient optimization is a class of widely used algorithms for training machine learning ...
Control variates are variance reduction tools for Monte Carlo estimators. They can provide significa...
<p>Stochastic gradient optimization is a class of widely used algorithms for training machine learni...
A novel control variate technique is proposed for post-processing of Markov chain Monte Carlo output...
Gradient information on the sampling distribution can be used to reduce the variance of Monte Carlo ...
© 2016 International Society for Bayesian Analysis. Many popular statistical models for complex phen...
Many popular statistical models for complex phenomena are intractable, in the sense that the likelih...
Many popular statistical models for complex phenomena areintractable, in the sense that the l...
Gradient information on the sampling distribution can be used to reduce the variance of Monte Carlo ...
International audienceWe study a variance reduction technique for Monte Carlo estimation of function...
Stochastic gradient MCMC (SGMCMC) offers a scalable alternative to traditional MCMC, by constructing...
International audienceMany pricing problems boil down to the computation of a high dimensional integ...
In this paper, control variates are proposed to speed up Monte Carlo Simulations to estimate expecte...