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Concentration of information content for convex measures

机译:凸措施信息内容集中

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We establish sharp exponential deviation estimates of the information content as well as a sharp bound on the varentropy for the class of convex measures on Euclidean spaces. This generalizes a similar development for log-concave measures in the recent work of Fradelizi, Madiman and Wang (2016). In particular, our results imply that convex measures in high dimension are concentrated in an annulus between two convex sets (as in the log-concave case) despite their possibly having much heavier tails. Various tools and consequences are developed, including a sharp comparison result for Rényi entropies, inequalities of Kahane-Khinchine type for convex measures that extend those of Koldobsky, Pajor and Yaskin (2008) for log-concave measures, and an extension of Berwald’s inequality (1947).
机译:我们建立了信息内容的尖锐指数偏差估计,以及欧几里德空间上的凸面测量的阵风的尖锐界限。这概括了在弗拉德利齐,麦蒂曼和王峰最近的工作中的日志禁令措施的类似发展。特别是,我们的结果意味着尽管它们可能具有更重的尾部,但高尺寸的凸测量率在两个凸套(如在对数凹形案例中)之间的环。开发了各种工具和后果,包括Rényi熵的夏普比较结果,Khinane-Khinchine类型的不等式,用于扩展Koldobsky,Pajor和Yaskin(2008)的展示措施,以及伯瓦尔德不等式的延伸( 1947)。

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