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arxiv: math/0406603 · v1 · submitted 2004-06-29 · 🧮 math.PR · math.ST· stat.TH

Convergence of the empirical process in Mallows distance, with an application to bootstrap performance

classification 🧮 math.PR math.STstat.TH
keywords bootstrapconvergencedistancedistributionmallowsapplicationboundempirical
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We study the rate of convergence of the Mallows distance between the empirical distribution of a sample and the underlying population. The surprising feature of our results is that the convergence rate is slower in the discrete case than in the absolutely continuous setting. We show how the hazard function plays a significant role in these calculations. As an application, we recall that the quantity studied provides an upper bound on the distance between the bootstrap distribution of a sample mean and its true sampling distribution. Moreover, the convenient properties of the Mallows metric yield a straightforward lower bound, and therefore a relatively precise description of the asymptotic performance of the bootstrap in this problem.

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  1. Bounding quantiles of Wasserstein distance between true and empirical measure

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    Normalized quantiles of Wasserstein distance to the empirical measure on [0,1] are asymptotically maximized for specific mixtures of two-point and uniform distributions, enabling explicit confidence regions.