JOURNAL ARTICLE

Optimization Monte Carlo: Efficient and Embarrassingly Parallel Likelihood-Free Inference

Edward MeedsMax Welling

Year: 2015 Journal:   arXiv (Cornell University) Vol: 28 Pages: 2080-2088   Publisher: Cornell University

Abstract

We describe an embarrassingly parallel, anytime Monte Carlo method for likelihood-free models. The algorithm starts with the view that the stochasticity of the pseudo-samples generated by the simulator can be controlled externally by a vector of random numbers u, in such a way that the outcome, knowing u, is deterministic. For each instantiation of u we run an optimization procedure to minimize the distance between summary statistics of the simulator and the data. After reweighing these samples using the prior and the Jacobian (accounting for the change of volume in transforming from the space of summary statistics to the space of parameters) we show that this weighted ensemble represents a Monte Carlo estimate of the posterior distribution. The procedure can be run embarrassingly parallel (each node handling one sample) and anytime (by allocating resources to the worst performing sample). The procedure is validated on six experiments.

Keywords:
Embarrassingly parallel Monte Carlo method Computer science Monte Carlo integration Statistical inference Monte Carlo method in statistical physics Algorithm Hybrid Monte Carlo Quasi-Monte Carlo method Mathematical optimization Statistics Mathematics Markov chain Monte Carlo Parallel algorithm

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Citation History

Topics

Gaussian Processes and Bayesian Inference
Physical Sciences →  Computer Science →  Artificial Intelligence
Markov Chains and Monte Carlo Methods
Physical Sciences →  Mathematics →  Statistics and Probability
Probabilistic and Robust Engineering Design
Social Sciences →  Decision Sciences →  Statistics, Probability and Uncertainty

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