We present a new class of interacting Markov chain Monte Carlo algorithms for solving numerically discrete-time measure-valued equations. The associated stochastic processes belong to the class of self-interacting Markov chains. In contrast to traditional Markov chains, their time evolutions depend on the occupation measure of their past values. This general methodology allows us to provide a natural way to sample from a sequence of target probability measures of increasing complexity. We develop an original theoretical analysis to analyze the behavior of these iterative algorithms which relies on measure-valued processes and semigroup techniques. We establish a variety of convergence results including exponential estimates and a uniform convergence theorem with respect to the number of target distributions. We also illustrate these algorithms in the context of Feynman-Kac distribution flows. © Institute of Mathematical Statistics, 2010.
CITATION STYLE
Del Moral, P., & Doucet, A. (2010). Interacting Markov chain Monte Carlo methods for solving nonlinear measure-valued equations. Annals of Applied Probability, 20(2), 593–639. https://doi.org/10.1214/09-AAP628
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