Title :
Minimax Estimation of Discrete Distributions Under
Loss
Author :
Yanjun Han ; Jiantao Jiao ; Weissman, Tsachy
Author_Institution :
Dept. of Electr. Eng., Stanford Univ., Stanford, CA, USA
Abstract :
We consider the problem of discrete distribution estimation under l1 loss. We provide tight upper and lower bounds on the maximum risk of the empirical distribution (the maximum likelihood estimator), and the minimax risk in regimes where the support size S may grow with the number of observations n. We show that among distributions with bounded entropy H, the asymptotic maximum risk for the empirical distribution is 2H/ln n, while the asymptotic minimax risk is H/ ln n. Moreover, we show that a hard-thresholding estimator oblivious to the unknown upper bound H, is essentially minimax. However, if we constrain the estimates to lie in the simplex of probability distributions, then the asymptotic minimax risk is again 2H/ ln n. We draw connections between our work and the literature on density estimation, entropy estimation, total variation distance (I1 divergence) estimation, joint distribution estimation in stochastic processes, normal mean estimation, and adaptive estimation.
Keywords :
entropy; maximum likelihood estimation; minimax techniques; risk management; statistical distributions; stochastic processes; I1 divergence; adaptive estimation; asymptotic maximum risk; asymptotic minimax risk; bounded entropy; entropy estimation; hard-thresholding estimator; joint distribution estimation; l1 loss; lower bounds; maximum empirical distribution risk; maximum likelihood estimator; minimax discrete distribution estimation; normal mean estimation; probability distributions; stochastic processes; total variation distance estimation; upper bounds; Convergence; Entropy; Joints; Maximum likelihood estimation; Stochastic processes; Upper bound; Distribution estimation; entropy estimation; hard-thresholding; high dimensional statistics; minimax risk;
Journal_Title :
Information Theory, IEEE Transactions on
DOI :
10.1109/TIT.2015.2478816