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Christophe Andrieu

Researcher at University of Bristol

Publications -  162
Citations -  17769

Christophe Andrieu is an academic researcher from University of Bristol. The author has contributed to research in topics: Markov chain Monte Carlo & Markov chain. The author has an hindex of 40, co-authored 160 publications receiving 16436 citations. Previous affiliations of Christophe Andrieu include AT&T & Wilmington University.

Papers
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On sequential Monte Carlo sampling methods for Bayesian filtering

TL;DR: An overview of methods for sequential simulation from posterior distributions for discrete time dynamic models that are typically nonlinear and non-Gaussian, and how to incorporate local linearisation methods similar to those which have previously been employed in the deterministic filtering literature are shown.
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An introduction to MCMC for machine learning

TL;DR: This purpose of this introductory paper is to introduce the Monte Carlo method with emphasis on probabilistic machine learning and review the main building blocks of modern Markov chain Monte Carlo simulation.
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Particle Markov chain Monte Carlo methods

TL;DR: It is shown here how it is possible to build efficient high dimensional proposal distributions by using sequential Monte Carlo methods, which allows not only to improve over standard Markov chain Monte Carlo schemes but also to make Bayesian inference feasible for a large class of statistical models where this was not previously so.
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A tutorial on adaptive MCMC

TL;DR: This work proposes a series of novel adaptive algorithms which prove to be robust and reliable in practice and reviews criteria and the useful framework of stochastic approximation, which allows one to systematically optimise generally used criteria.
Journal Article

On sequential simulation-based methods for Bayesian filtering

TL;DR: This report presents an overview of sequential simulationbased methods for Bayesian filtering of nonlinear and non-Gaussian dynamic models and proposes some original developments.