Open Access
VOL. 6 | 2010 Nonparametric regression in natural exponential families
T. Toni Cai, Harrison H. Zhou

Editor(s) James O. Berger, T. Tony Cai, Iain M. Johnstone

Inst. Math. Stat. (IMS) Collect., 2010: 199-215 (2010) DOI: 10.1214/10-IMSCOLL614

Abstract

Theory and methodology for nonparametric regression have been particularly well developed in the case of additive homoscedastic Gaussian noise. Inspired by asymptotic equivalence theory, there have been ongoing efforts in recent years to construct explicit procedures that turn other function estimation problems into a standard nonparametric regression with Gaussian noise. Then in principle any good Gaussian nonparametric regression method can be used to solve those more complicated nonparametric models. In particular, Brown, Cai and Zhou [3] considered nonparametric regression in natural exponential families with a quadratic variance function.

In this paper we extend the scope of Brown, Cai and Zhou [3] to general natural exponential families by introducing a new explicit procedure that is based on the variance stabilizing transformation. The new approach significantly reduces the bias of the inverse transformation and as a consequence it enables the method to be applicable to a wider class of exponential families. Combining this procedure with a wavelet block thresholding estimator for Gaussian nonparametric regression, we show that the resulting estimator enjoys a high degree of adaptivity and spatial adaptivity with near-optimal asymptotic performance over a broad range of Besov spaces.

Information

Published: 1 January 2010
First available in Project Euclid: 26 October 2010

zbMATH: 1202.62050
MathSciNet: MR2798520

Digital Object Identifier: 10.1214/10-IMSCOLL614

Subjects:
Primary: 62J08
Secondary: 62G20

Keywords: Adaptivity , ‎asymptotic ‎equivalence , exponential family , Gaussian nonparametric regression , James-Stein estimator , Quantile coupling , Wavelets

Rights: Copyright © 2010, Institute of Mathematical Statistics

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