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A comparative study of monotone nonparametric kernel estimates.

Authors :
Dette, Holger
Pilz, Kay F.
Source :
Journal of Statistical Computation & Simulation; Jan2006, Vol. 76 Issue 1, p41-56, 16p, 2 Charts, 5 Graphs
Publication Year :
2006

Abstract

In this paper we present a detailed numerical comparison of three monotone nonparametric kernel regression estimates, which isotonize a nonparametric curve estimator. The first estimate is the classical smoothed isotone estimate of Brunk [Brunk, H.D., 1955, Maximum likelihood estimates of monotone parameters. The Annals of Mathematical Statistics , 26, 607–616.]. The second method has recently been proposed by Hall and Huang [Hall, P. and Huang, L.-S., 2001, Nonparametric kernel regression subject to monotonicity constraints. The Annals of Statistics , 29, 624–647.] and modifies the weights of a commonly used kernel estimate such that the resulting estimate is monotone. The third estimate was recently proposed by Dette et al . [Dette, H., Neumeyer, N. and Pilz, K.F., 2003, A simple non-parametric estimator of a monotone regression function. Technical report, Department of Mathematics. Available online at: http://www.ruhr-uni-bochum.de/mathematik3/preprint.htm] and combines density and regression estimation techniques to obtain a monotone curve estimate of the inverse of the isotone regression function. The three concepts are briefly reviewed and their finite sample properties are studied by means of a simulation study. Although all estimates are first-order asymptotically equivalent (provided that the unknown regression function is isotone) some differences for moderate sample sizes are observed. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
00949655
Volume :
76
Issue :
1
Database :
Complementary Index
Journal :
Journal of Statistical Computation & Simulation
Publication Type :
Academic Journal
Accession number :
19373954
Full Text :
https://doi.org/10.1080/00949650412331321061