4.5 Article

Variational Bayes with synthetic likelihood

期刊

STATISTICS AND COMPUTING
卷 28, 期 4, 页码 971-988

出版社

SPRINGER
DOI: 10.1007/s11222-017-9773-3

关键词

Approximate Bayesian computation; Stochastic gradient ascent; Synthetic likelihoods; Variational Bayes

资金

  1. Singapore Ministry of Education Academic Research Fund [R-155-000-143-112]
  2. Australian Research Council [DE160100741, DP160102544]
  3. ACEMS Centre of Excellence [CE140100049]
  4. Australian Research Council [DE160100741] Funding Source: Australian Research Council

向作者/读者索取更多资源

Synthetic likelihood is an attractive approach to likelihood-free inference when an approximately Gaussian summary statistic for the data, informative for inference about the parameters, is available. The synthetic likelihood method derives an approximate likelihood function from a plug-in normal density estimate for the summary statistic, with plug-in mean and covariance matrix obtained by Monte Carlo simulation from the model. In this article, we develop alternatives to Markov chain Monte Carlo implementations of Bayesian synthetic likelihoods with reduced computational overheads. Our approach uses stochastic gradient variational inference methods for posterior approximation in the synthetic likelihood context, employing unbiased estimates of the log likelihood. We compare the new method with a related likelihood-free variational inference technique in the literature, while at the same time improving the implementation of that approach in a number of ways. These new algorithms are feasible to implement in situations which are challenging for conventional approximate Bayesian computation methods, in terms of the dimensionality of the parameter and summary statistic.

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