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Concentration inequalities for the empirical distribution of discrete distributions: beyond the method of types

机译:离散分布的经验分布的浓度不平等:超出类型的方法

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We study concentration inequalities for the Kullback–Leibler (KL) divergence between the empirical distribution and the true distribution. Applying a recursion technique, we improve over the method of types bound uniformly in all regimes of sample size n and alphabet size k, and the improvement becomes more significant when k is large. We discuss the applications of our results in obtaining tighter concentration inequalities for L_1 deviations of the empirical distribution from the true distribution, and the difference between concentration around the expectation or zero. We also obtain asymptotically tight bounds on the variance of the KL divergence between the empirical and true distribution, and demonstrate their quantitatively different behaviours between small and large sample sizes compared to the alphabet size.
机译:我们研究了经验分布和真实分布之间的kullback -leibler(KL)差异的浓度不平等。 采用递归技术,我们在所有样本n和字母大小K的所有方案中均匀结合的类型方法进行了改进,当K较大时,改进变得更加显着。 我们讨论了结果在获得经验分布与真实分布的L_1偏差以及期望周围浓度或零之间的差异方面的浓度不平等时的应用。 我们还在经验和真实分布之间的KL差异方差上获得了渐近的紧密界限,并且与字母大小相比,小样本量和大型样本量之间的定量行为不同。

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