Importance sampling methods for Bayesian discrimination between embedded models
Marin, Jean-Michel; Robert, Christian P. (2010), Importance sampling methods for Bayesian discrimination between embedded models, in Chen, M.H.; Müller, P.; Sun, D.; Ye, K.; Dey, D., Frontiers of Statistical Decision Making and Bayesian Analysis, Springer : Berlin Heidelberg, p. 513-527. 10.1007/978-1-4419-6944-6_14
External document linkhttps://hal.archives-ouvertes.fr/hal-00424475
Book titleFrontiers of Statistical Decision Making and Bayesian Analysis
Book authorChen, M.H.; Müller, P.; Sun, D.; Ye, K.; Dey, D.
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Abstract (EN)This paper surveys some well-established approaches on the approximation of Bayes factors used in Bayesian model choice, mostly as covered in Chen et al. (2000). Our focus here is on methods that are based on importance sampling strategies rather than variable dimension techniques like reversible jump MCMC, including: crude Monte Carlo, maximum likelihood based importance sampling, bridge and harmonic mean sampling, as well as Chib's method based on the exploitation of a functional equality. We demonstrate in this survey how these different methods can be efficiently implemented for testing the significance of a predictive variable in a probit model. Finally, we compare their performances on a real dataset.
Subjects / Keywordsimportance sampling; bridge sampling; harmonic mean; Chib's estimator; Bayesian model choice
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Estimation of demo-genetic model probabilities with Approximate Bayesian Computation using linear discriminant analysis on summary statistics. Cornuet, Jean-Marie; Robert, Christian P.; Pudlo, Pierre; Guillemaud, Thomas; Marin, Jean-Michel; Lombaert, Eric; Estoup, Arnaud (2012) Article accepté pour publication ou publié
Pillai, Natesh S.; Marin, Jean-Michel; Robert, Christian P. (Université Paris-DauphineParis, 2011-01) Document de travail / Working paper