Markov chain Monte Carlo with the Integrated Nested Laplace Approximation

被引:0
作者
Virgilio Gómez-Rubio
Håvard Rue
机构
[1] Universidad de Castilla-La Mancha,Department of Mathematics, School of Industrial Engineering
[2] King Abdullah University of Science and Technology,CEMSE Division
来源
Statistics and Computing | 2018年 / 28卷
关键词
Bayesian Lasso; INLA; MCMC; Missing values; Spatial models; Mixture models;
D O I
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中图分类号
学科分类号
摘要
The Integrated Nested Laplace Approximation (INLA) has established itself as a widely used method for approximate inference on Bayesian hierarchical models which can be represented as a latent Gaussian model (LGM). INLA is based on producing an accurate approximation to the posterior marginal distributions of the parameters in the model and some other quantities of interest by using repeated approximations to intermediate distributions and integrals that appear in the computation of the posterior marginals. INLA focuses on models whose latent effects are a Gaussian Markov random field. For this reason, we have explored alternative ways of expanding the number of possible models that can be fitted using the INLA methodology. In this paper, we present a novel approach that combines INLA and Markov chain Monte Carlo (MCMC). The aim is to consider a wider range of models that can be fitted with INLA only when some of the parameters of the model have been fixed. We show how new values of these parameters can be drawn from their posterior by using conditional models fitted with INLA and standard MCMC algorithms, such as Metropolis–Hastings. Hence, this will extend the use of INLA to fit models that can be expressed as a conditional LGM. Also, this new approach can be used to build simpler MCMC samplers for complex models as it allows sampling only on a limited number of parameters in the model. We will demonstrate how our approach can extend the class of models that could benefit from INLA, and how the R-INLA package will ease its implementation. We will go through simple examples of this new approach before we discuss more advanced applications with datasets taken from the relevant literature. In particular, INLA within MCMC will be used to fit models with Laplace priors in a Bayesian Lasso model, imputation of missing covariates in linear models, fitting spatial econometrics models with complex nonlinear terms in the linear predictor and classification of data with mixture models. Furthermore, in some of the examples we could exploit INLA within MCMC to make joint inference on an ensemble of model parameters.
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页码:1033 / 1051
页数:18
相关论文
共 76 条
[1]  
Andrieu C(2003)The pseudo-marginal approach to efficient monte carlo computations Genetics 37 697-725
[2]  
Roberts GO(1990)A look at some data on the Old Faithful geyser Appl. Stat. 39 357-365
[3]  
Azzalini A(2003)Estimation of population growth or decline in genetically monitored populations Genetics 164 1139-1160
[4]  
Bowman AW(2014)Approximate Bayesian inference for spatial econometrics models Spat. Stat. 9 146-165
[5]  
Beaumont MA(2015)Spatial data analysis with J. Stat. Softw. 63 1-31
[6]  
Bivand RS(1995) with some extensions J. Am. Stat. Assoc. 90 1313-1321
[7]  
Gómez-Rubio V(1970)Marginal likelihood from the Gibbs output Biometrika 57 97-109
[8]  
Rue H(1999)Monte Carlo sampling methods using Markov chains and their applications Stat. Sci. 14 382-401
[9]  
Bivand RS(2014)Bayesian model averaging: a tutorial Radiology 271 96-106
[10]  
Gómez-Rubio V(2012)Gastrointestinal stromal tumor: a method for optimizing the timing of CT scans in the follow-up of cancer patients J. R. Stat. Soc. Ser. C 61 99-115