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Confidence bands in density estimation

25 February 2010
Evarist Giné
Richard Nickl
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Abstract

Given a sample from some unknown continuous density f:R→Rf:\mathbb{R}\to\mathbb{R}f:R→R, we construct adaptive confidence bands that are honest for all densities in a "generic" subset of the union of ttt-H\"older balls, 0<t≤r0<t\le r0<t≤r, where rrr is a fixed but arbitrary integer. The exceptional ("nongeneric") set of densities for which our results do not hold is shown to be nowhere dense in the relevant H\"older-norm topologies. In the course of the proofs we also obtain limit theorems for maxima of linear wavelet and kernel density estimators, which are of independent interest.

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