Estimating Renyi Entropy of Discrete Distributions
Jayadev Acharya, Alon Orlitsky, Ananda Theertha Suresh, and Himanshu, Tyagi

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Abstract
It was recently shown that estimating the Shannon entropy of a discrete -symbol distribution requires samples, a number that grows near-linearly in the support size. In many applications can be replaced by the more general R\'enyi entropy of order , . We determine the number of samples needed to estimate for all , showing that requires a super-linear, roughly samples, noninteger requires a near-linear samples, but, perhaps surprisingly, integer requires only samples. Furthermore, developing on a recently established connection between polynomial approximation and estimation of additive functions of the form , we reduce the sample complexity for noninteger values of …
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