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New Upper bounds for KL-divergence Based on Integral Norms (2409.00934v2)

Published 2 Sep 2024 in math.PR, cs.IT, and math.IT

Abstract: In this paper, some new upper bounds for Kullback-Leibler divergence(KL-divergence) based on $L1, L2$ and $L\infty$ norms of density functions are discussed. Our findings unveil that the convergence in KL-divergence sense sandwiches between the convergence of density functions in terms of $L1$ and $L2$ norms. Furthermore, we endeavor to apply our newly derived upper bounds to the analysis of the rate theorem of the entropic conditional central limit theorem.

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