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arxiv: 0805.1404 · v2 · pith:TF6EIFNWnew · submitted 2008-05-09 · 🧮 math.ST · math.PR· stat.ME· stat.TH

Adaptive estimation of a distribution function and its density in sup-norm loss by wavelet and spline projections

classification 🧮 math.ST math.PRstat.MEstat.TH
keywords losssup-normdensitydistributionempiricalestimateestimatorsprocesses
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Given an i.i.d. sample from a distribution $F$ on $\mathbb{R}$ with uniformly continuous density $p_0$, purely data-driven estimators are constructed that efficiently estimate $F$ in sup-norm loss and simultaneously estimate $p_0$ at the best possible rate of convergence over H\"older balls, also in sup-norm loss. The estimators are obtained by applying a model selection procedure close to Lepski's method with random thresholds to projections of the empirical measure onto spaces spanned by wavelets or $B$-splines. The random thresholds are based on suprema of Rademacher processes indexed by wavelet or spline projection kernels. This requires Bernstein-type analogs of the inequalities in Koltchinskii [Ann. Statist. 34 (2006) 2593-2656] for the deviation of suprema of empirical processes from their Rademacher symmetrizations.

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