2023
DOI: 10.3982/te5206
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Pathwise concentration bounds for Bayesian beliefs

Drew Fudenberg,
Giacomo Lanzani,
Philipp Strack

Abstract: We show that Bayesian posteriors concentrate on the outcome distributions that approximately minimize the Kullback–Leibler divergence from the empirical distribution, uniformly over sample paths, even when the prior does not have full support. This generalizes Diaconis and Freedman's (1990) uniform convergence result to, e.g., priors that have finite support, are constrained by independence assumptions, or have a parametric form that cannot match some probability distributions. The concentration result lets us… Show more

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