The volume contains articles that should appeal to readers with computational, modeling, theoretical, and applied interests. Methodological issues include parallel computation, Hamiltonian Monte Carlo, dynamic model selection, small sample comparison of structural models, Bayesian thresholding methods in hierarchical graphical models, adaptive reversible jump MCMC, LASSO estimators, parameter expansion algorithms, the implementation of parameter and non-parameter-based approaches to variable selection, a survey of key results in objective Bayesian model selection methodology, and a careful look at the modeling of endogeneity in discrete data settings. Important contemporary questions are examined in applications in macroeconomics, finance, banking, labor economics, industrial organization, and transportation, among others, in which model uncertainty is a central consideration.
Ivan Jeliazkov & Dale J. Poirier
Bayesian Model Comparison [EPUB ebook]
Bayesian Model Comparison [EPUB ebook]
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Língua Inglês ● Formato EPUB ● ISBN 9781784411848 ● Editor Ivan Jeliazkov & Dale J. Poirier ● Editora Emerald Group Publishing Limited ● Publicado 2014 ● Carregável 3 vezes ● Moeda EUR ● ID 5763841 ● Proteção contra cópia Adobe DRM
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