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Statistics Seminar
Department of Mathematical Sciences

DATE:Thursday, February 18, 2016
TIME:1:15pm to 2:15pm
LOCATION:WH 100E
SPEAKER:Anton Schick, Binghamton University
TITLE:Convergence rates of kernel density estimators in the L1 norm


Abstract

The usual approach to evaluate the performance of a kernel density estimator (KDE) is to look at the mean integrated square error. This provides rates of convergence in the L2-norm. In this talk rates of convergence in the L1-norm are presented. We consider both estimators of a density f and its convolution ff with itself. In the former case the rates are nonparametric ns/(2s+1) and depend on the smoothness s of f. In the second case we obtain the parametric rate n1/2.