A Likelihood-Free Reverse Sampler of the Posterior Distribution
ISBN: 978-1-78560-787-5, eISBN: 978-1-78560-786-8
Publication date: 23 June 2016
Abstract
This paper considers properties of an optimization-based sampler for targeting the posterior distribution when the likelihood is intractable. It uses auxiliary statistics to summarize information in the data and does not directly evaluate the likelihood associated with the specified parametric model. Our reverse sampler approximates the desired posterior distribution by first solving a sequence of simulated minimum distance problems. The solutions are then reweighted by an importance ratio that depends on the prior and the volume of the Jacobian matrix. By a change of variable argument, the output consists of draws from the desired posterior distribution. Optimization always results in acceptable draws. Hence, when the minimum distance problem is not too difficult to solve, combining importance sampling with optimization can be much faster than the method of Approximate Bayesian Computation that by-passes optimization.
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Acknowledgements
Acknowledgements
We thank Christopher Drovandi, Neil Shephard, and two anonymous referees for many helpful comments. The second author would like to thank Aman Ullah for his support and guidance.
Citation
Forneron, J.-J. and Ng, S. (2016), "A Likelihood-Free Reverse Sampler of the Posterior Distribution", Essays in Honor of Aman Ullah (Advances in Econometrics, Vol. 36), Emerald Group Publishing Limited, Leeds, pp. 389-415. https://doi.org/10.1108/S0731-905320160000036020
Publisher
:Emerald Group Publishing Limited
Copyright © 2016 Emerald Group Publishing Limited