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      Chapter

      Asymptotics and connections to non-Bayesian approaches
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      Chapter

      Asymptotics and connections to non-Bayesian approaches

      DOI link for Asymptotics and connections to non-Bayesian approaches

      Asymptotics and connections to non-Bayesian approaches book

      Asymptotics and connections to non-Bayesian approaches

      DOI link for Asymptotics and connections to non-Bayesian approaches

      Asymptotics and connections to non-Bayesian approaches book

      ByAndrew Gelman, John B. Carlin, Hal S. Stern, David B. Dunson, Aki Vehtari, Donald B. Rubin
      BookBayesian Data Analysis

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      Edition 3rd Edition
      First Published 2013
      Imprint Chapman and Hall/CRC
      Pages 18
      eBook ISBN 9780429113079
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      ABSTRACT

      We have seen that many simple Bayesian analyses based on noninformative prior distributions give similar results to standard non-Bayesian approaches (for example, the posterior t interval for the normal mean with unknown variance). The extent to which a noninformative prior distribution can be justified as an objective assumption depends on the amount of information available in the data: in the simple cases discussed in Chapters 2 and 3, it was clear that as the sample size n increases, the influence of the prior distribution on posterior inferences decreases. These ideas, sometimes referred to as asymptotic theory, because they refer to properties that hold in the limit as n becomes large, will be reviewed in the present chapter, along with some more explicit discussion of the connections between Bayesian and non-Bayesian methods. The large-sample results are not actually necessary for performing Bayesian data analysis but are often useful as approximations and as tools for understanding.

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