International audienceIn this paper we propose a novel variance reduction approach for additive functionals of Markov chains based on minimization of an estimate for the asymptotic variance of these functionals over suitable classes of control variates. A distinctive feature of the proposed approach is its ability to significantly reduce the overall finite sample variance. This feature is theoretically demonstrated by means of a deep non asymptotic analysis of a variance reduced functional as well as by a thorough simulation study. In particular we apply our method to various MCMC Bayesian estimation problems where it favourably compares to the existing variance reduction approaches
A general methodology is introduced for the construction and effective application of control variat...
Differential geometric Markov Chain Monte Carlo (MCMC) strategies exploit the geometry of the target...
We derive new results comparing the asymptotic variance of diffusions by writing them as appropriate...
International audienceIn this paper we propose a novel variance reduction approach for additive func...
A new methodology is presented for the construction of control variates to reduce the variance of ad...
International audienceIn this paper we propose a novel and practical variance reduction approach for...
We study a variance reduction technique for Monte Carlo estimation of functionals in Markov chains....
Interest is in evaluating, by Markov chain Monte Carlo (MCMC) simulation, the expected value of a f...
In the present thesis we are concerned with appropriate variance reduction methods for specific clas...
We study a sequential variance reduction technique for Monte Carlo estimation of functionals in Mark...
We present a Monte Carlo integration method, antithetic Markov chain sampling (AMCS), that incorpora...
A general methodology is introduced for the construction and effective application of control variat...
A general methodology is introduced for the construction and effective application of control variat...
Differential geometric Markov Chain Monte Carlo (MCMC) strategies exploit the geometry of the target...
We derive new results comparing the asymptotic variance of diffusions by writing them as appropriate...
International audienceIn this paper we propose a novel variance reduction approach for additive func...
A new methodology is presented for the construction of control variates to reduce the variance of ad...
International audienceIn this paper we propose a novel and practical variance reduction approach for...
We study a variance reduction technique for Monte Carlo estimation of functionals in Markov chains....
Interest is in evaluating, by Markov chain Monte Carlo (MCMC) simulation, the expected value of a f...
In the present thesis we are concerned with appropriate variance reduction methods for specific clas...
We study a sequential variance reduction technique for Monte Carlo estimation of functionals in Mark...
We present a Monte Carlo integration method, antithetic Markov chain sampling (AMCS), that incorpora...
A general methodology is introduced for the construction and effective application of control variat...
A general methodology is introduced for the construction and effective application of control variat...
Differential geometric Markov Chain Monte Carlo (MCMC) strategies exploit the geometry of the target...
We derive new results comparing the asymptotic variance of diffusions by writing them as appropriate...