scispace - formally typeset
A

Arnaud Doucet

Researcher at University of Oxford

Publications -  431
Citations -  46995

Arnaud Doucet is an academic researcher from University of Oxford. The author has contributed to research in topics: Particle filter & Markov chain Monte Carlo. The author has an hindex of 75, co-authored 386 publications receiving 43388 citations. Previous affiliations of Arnaud Doucet include University of British Columbia & École nationale supérieure de l'électronique et de ses applications.

Papers
More filters
BookDOI

Sequential Monte Carlo methods in practice

TL;DR: This book presents the first comprehensive treatment of Monte Carlo techniques, including convergence results and applications to tracking, guidance, automated target recognition, aircraft navigation, robot navigation, econometrics, financial modeling, neural networks, optimal control, optimal filtering, communications, reinforcement learning, signal enhancement, model averaging and selection.
Journal ArticleDOI

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.
Journal ArticleDOI

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.
Journal ArticleDOI

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.
Book Chapter

A Tutorial on Particle Filtering and Smoothing: Fifteen years later

TL;DR: A complete, up-to-date survey of particle filtering methods as of 2008, including basic and advanced particle methods for filtering as well as smoothing.