REVISITING IDENTIFICATION CONCEPTS IN BAYESI ANANALYSIS

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Abstract

This paper studies the role played by identification in the Bayesian analysis of statistical and econometric models. First, for unidentified models we demonstrate that there are situations where the introduction of a non-degenerate prior distribution can make a parameter that is nonidentified in frequentist theory identified in Bayesian theory. In other situations, it is preferable to work with the unidentified model and construct a Markov Chain Monte Carlo (MCMC) algorithms for it instead of intro- ducing identifying assumptions. Second, for partially identified models we demon- strate how to construct the prior and posterior distributions for the identified set parameter and how to conduct Bayesian analysis. Finally, for models that contain some parameters that are identified and others that are not we show that marginalizing out the identified parameter from the likelihood with respect to its conditional prior, given the nonidentified parameter, allows the data to be informative about the nonidentified and partially identified parameter. The paper provides examples and simulations that illustrate how to implement our techniques.

Original languageEnglish
Pages (from-to)1-38
Number of pages38
JournalAnnals of Economics and Statistics
Issue number144
DOIs
Publication statusPublished - 1 Dec 2021

Keywords

  • Capacity functional
  • Dirichlet process
  • Exact estimability
  • Minimal sufficiency
  • Nonparametric models
  • Set identification

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