Open Access
June 2021 Max-and-Smooth: A Two-Step Approach for Approximate Bayesian Inference in Latent Gaussian Models
Birgir Hrafnkelsson, Stefan Siegert, Raphaël Huser, Haakon Bakka, Árni V. Jóhannesson
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Bayesian Anal. 16(2): 611-638 (June 2021). DOI: 10.1214/20-BA1219

Abstract

With modern high-dimensional data, complex statistical models are necessary, requiring computationally feasible inference schemes. We introduce Max-and-Smooth, an approximate Bayesian inference scheme for a flexible class of latent Gaussian models (LGMs) where one or more of the likelihood parameters are modeled by latent additive Gaussian processes. Our proposed inference scheme is a two-step approach. In the first step (Max), the likelihood function is approximated by a Gaussian density with mean and covariance equal to either (a) the maximum likelihood estimate and the inverse observed information, respectively, or (b) the mean and covariance of the normalized likelihood function. In the second step (Smooth), the latent parameters and hyperparameters are inferred and smoothed with the approximated likelihood function. The proposed method ensures that the uncertainty from the first step is correctly propagated to the second step. Because the prior density for the latent parameters is assumed to be Gaussian and the approximated likelihood function is Gaussian, the approximate posterior density of the latent parameters (conditional on the hyperparameters) is also Gaussian, thus facilitating efficient posterior inference in high dimensions. Furthermore, the approximate marginal posterior distribution of the hyperparameters is tractable, and as a result, the hyperparameters can be sampled independently of the latent parameters. We show that the computational cost of Max-and-Smooth is close to being insensitive to the number of independent data replicates, and that it scales well with increased dimension of the latent parameter vector provided that its Gaussian prior density is specified with a sparse precision matrix. In the case of a large number of independent data replicates, sparse precision matrices, and high-dimensional latent vectors, the speedup is substantial in comparison to an MCMC scheme that infers the posterior density from the exact likelihood function. The accuracy of the Gaussian approximation to the likelihood function increases with the number of data replicates per latent model parameter. The proposed inference scheme is demonstrated on one spatially referenced real dataset and on simulated data mimicking spatial, temporal, and spatio-temporal inference problems. Our results show that Max-and-Smooth is accurate and fast.

Acknowledgments

We would like to acknowledge support from the EPSRC ReCoVer network, UK National Environment Research Council (NERC) and the University of Iceland Research Fund. We thank the Associate Editor and the reviewer for their constructive suggestions.

Citation

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Birgir Hrafnkelsson. Stefan Siegert. Raphaël Huser. Haakon Bakka. Árni V. Jóhannesson. "Max-and-Smooth: A Two-Step Approach for Approximate Bayesian Inference in Latent Gaussian Models." Bayesian Anal. 16 (2) 611 - 638, June 2021. https://doi.org/10.1214/20-BA1219

Information

Published: June 2021
First available in Project Euclid: 19 June 2020

MathSciNet: MR4255342
zbMATH: 1480.62056
Digital Object Identifier: 10.1214/20-BA1219

Keywords: Approximate Bayesian inference , Bayesian hierarchical model , latent Gaussian model , multivariate link function , spatio-temporal data

Vol.16 • No. 2 • June 2021
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