Smooth estimation of a monotone density |
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Authors: | Aad van der Vaart Mark van der Laan |
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Affiliation: | 1. Division of Mathematics and Computer Science , Free University , Amsterdam, The Netherlands;2. Division of Biostatistics , University of California , 140 Earl Warren Hall, Berkeley, California, 94720-7360, USA |
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Abstract: | We investigate the interplay of smoothness and monotonicity assumptions when estimating a density from a sample of observations. The nonparametric maximum likelihood estimator of a decreasing density on the positive half line attains a rate of convergence of [Formula: See Text] at a fixed point t if the density has a negative derivative at t. The same rate is obtained by a kernel estimator of bandwidth [Formula: See Text], but the limit distributions are different. If the density is both differentiable at t and known to be monotone, then a third estimator is obtained by isotonization of a kernel estimator. We show that this again attains the rate of convergence [Formula: See Text], and compare the limit distributions of the three types of estimators. It is shown that both isotonization and smoothing lead to a more concentrated limit distribution and we study the dependence on the proportionality constant in the bandwidth. We also show that isotonization does not change the limit behaviour of a kernel estimator with a bandwidth larger than [Formula: See Text], in the case that the density is known to have more than one derivative. |
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Keywords: | Isotonic Density Estimation Kernel Density Estimator Brownian Motion |
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