Concentration Bounds for Discrete Distribution Estimation in KL Divergence

arxiv(2023)

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摘要
We study the problem of discrete distribution estimation in KL divergence and provide concentration bounds for the Laplace estimator. We show that the deviation from mean scales as $\sqrt{k}/n$ when $n \ge k$, improving upon the best prior result of $k/n$. We also establish a matching lower bound that shows that our bounds are tight up to polylogarithmic factors.
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关键词
concentration bounds,discrete distribution estimation,KL divergence,Laplace estimator,mean scale deviation,polylogarithmic factors
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