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SAC
2008
ACM

Particle methods for maximum likelihood estimation in latent variable models

13 years 3 months ago
Particle methods for maximum likelihood estimation in latent variable models
Standard methods for maximum likelihood parameter estimation in latent variable models rely on the Expectation-Maximization algorithm and its Monte Carlo variants. Our approach is different and motivated by similar considerations to simulated annealing; that is we build a sequence of artificial distributions whose support concentrates itself on the set of maximum likelihood estimates. We sample from these distributions using a sequential Monte Carlo approach. We demonstrate state of the art performance for several applications of the proposed approach. Key words: Latent Variable Models, Markov Chain Monte Carlo, Maximum Likelihood, Sequential Monte Carlo, Simulated Annealing.
Adam M. Johansen, Arnaud Doucet, Manuel Davy
Added 28 Dec 2010
Updated 28 Dec 2010
Type Journal
Year 2008
Where SAC
Authors Adam M. Johansen, Arnaud Doucet, Manuel Davy
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