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An Effective Bernstein-type Bound on Shannon Entropy over Countably Infinite Alphabets (2106.12149v1)

Published 23 Jun 2021 in cs.IT, math.IT, and math.PR

Abstract: We prove a Bernstein-type bound for the difference between the average of negative log-likelihoods of independent discrete random variables and the Shannon entropy, both defined on a countably infinite alphabet. The result holds for the class of discrete random variables with tails lighter than or on the same order of a discrete power-law distribution. Most commonly-used discrete distributions such as the Poisson distribution, the negative binomial distribution, and the power-law distribution itself belong to this class. The bound is effective in the sense that we provide a method to compute the constants in it.

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