Minimax Estimation of Functionals of Discrete Distributions
Jiantao Jiao, Kartik Venkat, Yanjun Han, Tsachy Weissman

TL;DR
This paper develops minimax estimators for functionals of discrete distributions, especially entropy and related measures, achieving optimal sample complexity and practical improvements over existing methods.
Contribution
It introduces a unified approach combining polynomial approximation and bias correction for minimax estimation of discrete distribution functionals, with proven optimal rates.
Findings
Achieves minimax $L_2$ rates for entropy and $F_eta$ estimation.
Estimates entropy with optimal sample complexity $n hicksim S/\ln S$.
Demonstrates practical advantages in accuracy and runtime over existing methods.
Abstract
We propose a general methodology for the construction and analysis of minimax estimators for a wide class of functionals of finite dimensional parameters, and elaborate on the case of discrete distributions, where the alphabet size is unknown and may be comparable with the number of observations . We treat the respective regions where the functional is "nonsmooth" and "smooth" separately. In the "nonsmooth" regime, we apply an unbiased estimator for the best polynomial approximation of the functional whereas, in the "smooth" regime, we apply a bias-corrected Maximum Likelihood Estimator (MLE). We illustrate the merit of this approach by thoroughly analyzing two important cases: the entropy and . We obtain the minimax rates for estimating these functionals. In particular, we demonstrate…
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