We present a new class of interacting Markov chain Monte Carlo methods to approximate numerically discrete-time nonlinear measure-valued equations. These stochastic processes belong to the class of self-interacting Markov chains with respect to their occupation measures. We provide several convergence results for these new methods including exponential estimates and a uniform convergence theorem with respect to the time parameter, yielding what seems to be the first results of this kind for this type of self-interacting models. We illustrate these models in the context of Feynman-Kac distribution semigroups arising in physics, biology and in statistics. © 2009 Académie des sciences
We consider the new class of the Markov measure-valued stochastic processes with constant mass. We g...
A discrete time stochastic model for a multiagent system given in terms of a large collection of int...
A discrete time stochastic model for a multiagent system given in terms of a large collection of int...
We present a new interacting Markov chain Monte Carlo methodology for solving numerically discrete-t...
We present a new class of interacting Markov chain Monte Carlo algorithms for solving numerically di...
We present a new class of interacting Markov chain Monte Carlo algo-rithms for solving numerically d...
We present a multivariate central limit theorem for a general class of interacting Markov chain Mont...
AbstractWe present a multivariate central limit theorem for a general class of interacting Markov ch...
We present a functional central limit theorem for a new class of interacting Markov chain Monte Carl...
We present a functional central limit theorem for a general class of interacting Markov chain Monte ...
We present a functional central limit theorem for a new class of interaction Markov chain Monte Carl...
In this article we study a class of self interacting Markov chain models. We propose a novel theoret...
Let P(E) be the space of probability measures on a measurable space (E, ε). In this paper we introdu...
Let P (E) be the space of probability measures on a measurable space (E,E). In this paper we introdu...
Sequential Monte Carlo (SMC) is a methodology for sampling approximately from a sequence of probabil...
We consider the new class of the Markov measure-valued stochastic processes with constant mass. We g...
A discrete time stochastic model for a multiagent system given in terms of a large collection of int...
A discrete time stochastic model for a multiagent system given in terms of a large collection of int...
We present a new interacting Markov chain Monte Carlo methodology for solving numerically discrete-t...
We present a new class of interacting Markov chain Monte Carlo algorithms for solving numerically di...
We present a new class of interacting Markov chain Monte Carlo algo-rithms for solving numerically d...
We present a multivariate central limit theorem for a general class of interacting Markov chain Mont...
AbstractWe present a multivariate central limit theorem for a general class of interacting Markov ch...
We present a functional central limit theorem for a new class of interacting Markov chain Monte Carl...
We present a functional central limit theorem for a general class of interacting Markov chain Monte ...
We present a functional central limit theorem for a new class of interaction Markov chain Monte Carl...
In this article we study a class of self interacting Markov chain models. We propose a novel theoret...
Let P(E) be the space of probability measures on a measurable space (E, ε). In this paper we introdu...
Let P (E) be the space of probability measures on a measurable space (E,E). In this paper we introdu...
Sequential Monte Carlo (SMC) is a methodology for sampling approximately from a sequence of probabil...
We consider the new class of the Markov measure-valued stochastic processes with constant mass. We g...
A discrete time stochastic model for a multiagent system given in terms of a large collection of int...
A discrete time stochastic model for a multiagent system given in terms of a large collection of int...