Posterior analysis of $ in the binomial $(n,p)$ problem with both parameters unknown -- with applications to quantitative nanoscopy

2018-09-07 | preprint

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​Schmidt-Hieber, Johannes, Laura Fee Schneider, Thomas Staudt, Andrea Krajina, Timo Aspelmeier, and Axel Munk​. "Posterior analysis of $ in the binomial $(n,p)$ problem with both parameters unknown -- with applications to quantitative nanoscopy​." ​Preprint, submitted ​​2018. ​https://mbexc.uni-goettingen.de/literature/publications/306. 

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Authors
Schmidt-Hieber, Johannes; Schneider, Laura Fee; Staudt, Thomas; Krajina, Andrea; Aspelmeier, Timo; Munk, Axel 
Abstract
Estimation of the population size $ from $ i.i.d.\ binomial observations with unknown success probability $ is relevant to a multitude of applications and has a long history. Without additional prior information this is a notoriously difficult task when $ 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 \rightarrow0$ and \rightarrow\infty$ as \to\infty$. Furthermore, we suggest a new class of Bayesian estimators for $ 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.
Issue Date
7-September-2018
Project
EXC 2067: Multiscale Bioimaging 
Working Group
RG Munk 

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