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Talk by Prof. Arnaud Doucet on The correlated pseudo-marginal method for Inference in latent variable models

Wed, 26 Apr 2017 11:00 - 12:00 JST

AIP

Nihonbashi 1-chome Mitsui Building, 15th floor, 1-4-1 Nihonbashi, Chuo-ku, Tokyo 103-0027, Japan

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Prof. Arnaud Doucet (http://www.stats.ox.ac.uk/~doucet/) from the University of Oxford will be visiting AIP and giving a talk. Arnaud might be free for a one-on-one meeting in the afternoon, so if you want to see him, please send me an email at emtiyaz.khan@riken.jp.

Title: The correlated pseudo-marginal method for Inference in latent variable models

Abstract: The pseudo-marginal algorithm is a popular variant of the Metropolis--Hastings scheme which allows us to sample asymptotically from a target probability density when we are only able to estimate an unnormalized version of this target unbiasedly. It has found numerous applications in Bayesian statistics as there are many scenarios where the likelihood function is intractable but can be estimated unbiasedly using Monte Carlo samples. For a fixed computing time, it has been shown in several recent contributions that an efficient implementation of the pseudo-marginal method requires the variance of the log-likelihood ratio estimator appearing in the acceptance probability of the algorithm to be of order 1, which in turn requires scaling the number of Monte Carlo samples linearly with the number of data points. We propose a modification of the pseudo-marginal algorithm, termed the correlated pseudo-marginal algorithm, which is based on a novel log-likelihood ratio estimator computed using the difference of two positively correlated log-likelihood estimators. This approach allows us to scale the number of Monte Carlo samples sub-linearly with the number of data points. A non-standard weak convergence analysis of the method will be presented. In our numerical examples, the efficiency of computations is increased relative to the pseudo-marginal by up to several orders of magnitude for large datasets.

This is joint work George Deligiannidis and Michael K. Pitt.

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