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Finite-Sample Maximum Likelihood Estimation of Location

6 June 2022
Shivam Gupta
Jasper C. H. Lee
Eric Price
Paul Valiant
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Abstract

We consider 1-dimensional location estimation, where we estimate a parameter λ\lambdaλ from nnn samples λ+ηi\lambda + \eta_iλ+ηi​, with each ηi\eta_iηi​ drawn i.i.d. from a known distribution fff. For fixed fff the maximum-likelihood estimate (MLE) is well-known to be optimal in the limit as n→∞n \to \inftyn→∞: it is asymptotically normal with variance matching the Cram\ér-Rao lower bound of 1nI\frac{1}{n\mathcal{I}}nI1​, where I\mathcal{I}I is the Fisher information of fff. However, this bound does not hold for finite nnn, or when fff varies with nnn. We show for arbitrary fff and nnn that one can recover a similar theory based on the Fisher information of a smoothed version of fff, where the smoothing radius decays with nnn.

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