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Activity Number: 367 - Highlights of JCGS Publications 2021
Type: Invited
Date/Time: Wednesday, August 10, 2022 : 8:30 AM to 10:20 AM
Sponsor: Journal of Computational and Graphical Statistics
Abstract #319230
Title: Global Consensus Monte Carlo
Author(s): Lewis J. Rendell and Adam Michael Johansen* and Anthony Lee and Nick Whiteley
Companies: Google and University of Warwick and University of Bristol and University of Bristol
Keywords: Bayesian inference; distributed inference; Mrkov chain Monte Carlo; sequential Monte Carlo
Abstract:

When conducting Bayesian inference with large data sets, data is often distributed across multiple machines. We consider a likelihood function expressed as a product of terms, each associated with a subset of the data. Inspired by global variable consensus optimisation, we introduce an instrumental hierarchical model associating auxiliary statistical parameters with each term, which are conditionally independent given the top-level parameters. One of these top-level parameters controls the unconditional strength of association between the auxiliary parameters. This model leads to a distributed MCMC algorithm on an extended state space yielding approximations of posterior expectations. A trade-off between computational tractability and fidelity to the original model can be controlled by changing the association strength in the instrumental model. We further propose the use of a SMC sampler with a sequence of association strengths, allowing both the automatic determination of appropriate strengths and for a bias correction technique to be applied. In contrast to similar distributed Monte Carlo algorithms, this approach requires few distributional assumptions.


Authors who are presenting talks have a * after their name.

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