Bayes factors for longitudinal model assessment via power posteriors

09/08/2022
by   Gabriel Calvo, et al.
0

Bayes factor, defined as the ratio of the marginal likelihood functions of two competing models, is the natural Bayesian procedure for model selection. Marginal likelihoods are usually computationally demanding and complex. This scenario is particularly cumbersome in linear mixed models (LMMs) because marginal likelihood functions involve integrals of large dimensions determined by the number of parameters and the number of random effects, which in turn increase with the number of individuals in the sample. The power posterior is an attractive proposal in the context of the Markov chain Monte Carlo algorithms that allows expressing marginal likelihoods as one-dimensional integrals over the unit range. This paper explores the use of power posteriors in LMMs and discusses their behaviour through two simulation studies and a real data set on European sardine landings in the Mediterranean Sea.

READ FULL TEXT
research
11/18/2021

Bayes factors for accelerated life testing models

In Bayesian accelerated life testing, the most used tool for model compa...
research
01/31/2022

A subsampling approach for Bayesian model selection

It is common practice to use Laplace approximations to compute marginal ...
research
04/02/2020

Bayesian model selection approach for colored graphical Gaussian models

We consider a class of colored graphical Gaussian models obtained by pla...
research
05/11/2021

Factoring Multidimensional Data to Create a Sophisticated Bayes Classifier

In this paper we derive an explicit formula for calculating the marginal...
research
07/26/2022

A Bayesian hierarchical framework for emulating a complex crop yield simulator

Emulation of complex computer simulations have become an effective tool ...
research
10/10/2018

Empirical Bayes to assess ecological diversity and similarity with overdispersion in multivariate counts

The assessment of diversity and similarity is relevant in monitoring the...

Please sign up or login with your details

Forgot password? Click here to reset