POSTERIOR ANALYSIS OF n IN THE BINOMIAL (n, p) PROBLEM WITH BOTH PARAMETERS UNKNOWN-WITH APPLICATIONS TO QUANTITATIVE NANOSCOPY

ANNALS OF STATISTICS(2021)

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摘要
Estimation of the population size n from k i.i.d. binomial observations with unknown success probability p is relevant to a multitude of applications and has a long history. Without additional prior information this is a notoriously difficult task when p becomes small, and the Bayesian approach becomes particularly useful. For a large class of priors, we establish posterior contraction and a Bernstein-von Mises type theorem in a setting where p -> 0 and n -> infinity as k -> infinity. Furthermore, we suggest a new class of Bayesian estimators for n and provide a comprehensive simulation study in which we investigate their performance. To showcase the advantages of a Bayesian approach on real data, we also benchmark our estimators in a novel application from super-resolution microscopy.
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关键词
Bayesian estimation,posterior contraction,Bernstein-von Mises theorem,binomial distribution,beta-binomial likelihood,quantitative cell imaging
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