Emergent Mind

On the Efficient Implementation of High Accuracy Optimality of Profile Maximum Likelihood

(2210.06728)
Published Oct 13, 2022 in stat.ML , cs.DS , cs.IT , cs.LG , math.IT , and stat.CO

Abstract

We provide an efficient unified plug-in approach for estimating symmetric properties of distributions given $n$ independent samples. Our estimator is based on profile-maximum-likelihood (PML) and is sample optimal for estimating various symmetric properties when the estimation error $\epsilon \gg n{-1/3}$. This result improves upon the previous best accuracy threshold of $\epsilon \gg n{-1/4}$ achievable by polynomial time computable PML-based universal estimators [ACSS21, ACSS20]. Our estimator reaches a theoretical limit for universal symmetric property estimation as [Han21] shows that a broad class of universal estimators (containing many well known approaches including ours) cannot be sample optimal for every $1$-Lipschitz property when $\epsilon \ll n{-1/3}$.

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