AbstractThe importance-sampling Monte Carlo algorithm appears to be the universally optimal solution to the problem of sampling the state space of statistical mechanical systems according to the relative importance of configurations for the partition function or thermal averages of interest. While this is true in terms of its simplicity and universal applicability, the resulting approach suffers from the presence of temporal correlations of successive samples naturally implied by the Markov chain underlying the importance-sampling simulation. In many situations, these autocorrelations are moderate and can be easily accounted for by an appropriately adapted analysis of simulation data. They turn out to be a major hurdle, however, in the vici...
We discuss several algorithms for sampling from unnormalized probability distributions in statistica...
I will present some numerical challenges raised by the simulation of materials at the atomistic leve...
International audienceA novel Monte Carlo flat histogram algorithm is proposed to get the classical ...
The importance-sampling Monte Carlo algorithm appears to be the universally optimal solution to the ...
AbstractThe importance-sampling Monte Carlo algorithm appears to be the universally optimal solution...
The most efficient weights for Markov chain Monte Carlo calculations of physical observables are not...
In this thesis, improved sampling algorithms are applied to atomic and molecular clusters. The paral...
Monte Carlo simulations are methods for simulating statistical systems. The aim is to generate a rep...
We formulate a single-cluster Monte Carlo algorithm for the simulation of the random-cluster model. ...
Abstract. When studying high-dimensional dynamical systems such as macromolecules, quan-tum systems ...
A new approach to cluster simulation is developed in the context of nucleation theory. This approach...
Monte Carlo simulations have boosted the numerical study of several different physical systems and i...
We present a new, maximum-likelihood based method to combine data from a multiple number of Monte C...
Competing phases or interactions in complex many-particle systems can result in free energy barriers...
A method is introduced that is easy to implement and greatly reduces the systematic error resulting ...
We discuss several algorithms for sampling from unnormalized probability distributions in statistica...
I will present some numerical challenges raised by the simulation of materials at the atomistic leve...
International audienceA novel Monte Carlo flat histogram algorithm is proposed to get the classical ...
The importance-sampling Monte Carlo algorithm appears to be the universally optimal solution to the ...
AbstractThe importance-sampling Monte Carlo algorithm appears to be the universally optimal solution...
The most efficient weights for Markov chain Monte Carlo calculations of physical observables are not...
In this thesis, improved sampling algorithms are applied to atomic and molecular clusters. The paral...
Monte Carlo simulations are methods for simulating statistical systems. The aim is to generate a rep...
We formulate a single-cluster Monte Carlo algorithm for the simulation of the random-cluster model. ...
Abstract. When studying high-dimensional dynamical systems such as macromolecules, quan-tum systems ...
A new approach to cluster simulation is developed in the context of nucleation theory. This approach...
Monte Carlo simulations have boosted the numerical study of several different physical systems and i...
We present a new, maximum-likelihood based method to combine data from a multiple number of Monte C...
Competing phases or interactions in complex many-particle systems can result in free energy barriers...
A method is introduced that is easy to implement and greatly reduces the systematic error resulting ...
We discuss several algorithms for sampling from unnormalized probability distributions in statistica...
I will present some numerical challenges raised by the simulation of materials at the atomistic leve...
International audienceA novel Monte Carlo flat histogram algorithm is proposed to get the classical ...