International audienceWe analyze the convergence properties of the Wang-Landau algorithm. This sampling method belongs to the general class of adaptive importance sampling strategies which use the free energy along a chosen reaction coordinate as a bias. Such algorithms are very helpful to enhance the sampling properties of Markov Chain Monte Carlo algorithms, when the dynamics is metastable. We prove the convergence of the Wang-Landau algorithm and an associated central limit theorem
21 pages, 4 figuresInternational audienceThe Wang-Landau algorithm aims at sampling from a probabili...
This paper studies the mixing time of certain adaptive Markov Chain Monte Carlo algorithms. Under so...
21 pages, 4 figuresInternational audienceThe Wang-Landau algorithm aims at sampling from a probabili...
International audienceWe analyze the convergence properties of the Wang-Landau algorithm. This sampl...
International audienceWe analyze the convergence properties of the Wang-Landau algorithm. This sampl...
International audienceWe analyze the convergence properties of the Wang-Landau algorithm. This sampl...
International audienceWe analyze the convergence properties of the Wang-Landau algorithm. This sampl...
International audienceWe analyze the convergence properties of the Wang-Landau algorithm. This sampl...
International audienceWe analyze the convergence properties of the Wang-Landau algorithm. This sampl...
International audienceWe analyze the convergence properties of the Wang-Landau algorithm. This sampl...
International audienceWe analyze the convergence properties of the Wang-Landau algorithm. This sampl...
The Wang-Landau algorithm (Wang and Landau (2001)) is a recent Monte Carlo method that has generated...
The Wang-Landau algorithm is an adaptive Markov chain Monte Carlo algorithm to calculate the spectra...
This paper discusses some convergence properties in the entropic sampling Monte Carlo methods with m...
The Wang-Landau algorithm aims at sampling from a probability distribution, while penalizing some re...
21 pages, 4 figuresInternational audienceThe Wang-Landau algorithm aims at sampling from a probabili...
This paper studies the mixing time of certain adaptive Markov Chain Monte Carlo algorithms. Under so...
21 pages, 4 figuresInternational audienceThe Wang-Landau algorithm aims at sampling from a probabili...
International audienceWe analyze the convergence properties of the Wang-Landau algorithm. This sampl...
International audienceWe analyze the convergence properties of the Wang-Landau algorithm. This sampl...
International audienceWe analyze the convergence properties of the Wang-Landau algorithm. This sampl...
International audienceWe analyze the convergence properties of the Wang-Landau algorithm. This sampl...
International audienceWe analyze the convergence properties of the Wang-Landau algorithm. This sampl...
International audienceWe analyze the convergence properties of the Wang-Landau algorithm. This sampl...
International audienceWe analyze the convergence properties of the Wang-Landau algorithm. This sampl...
International audienceWe analyze the convergence properties of the Wang-Landau algorithm. This sampl...
The Wang-Landau algorithm (Wang and Landau (2001)) is a recent Monte Carlo method that has generated...
The Wang-Landau algorithm is an adaptive Markov chain Monte Carlo algorithm to calculate the spectra...
This paper discusses some convergence properties in the entropic sampling Monte Carlo methods with m...
The Wang-Landau algorithm aims at sampling from a probability distribution, while penalizing some re...
21 pages, 4 figuresInternational audienceThe Wang-Landau algorithm aims at sampling from a probabili...
This paper studies the mixing time of certain adaptive Markov Chain Monte Carlo algorithms. Under so...
21 pages, 4 figuresInternational audienceThe Wang-Landau algorithm aims at sampling from a probabili...