Adaptive Nonparametric Comparison of Regression Curves

Author: Zou Changliang   Liu Yukun   Wang Zhaojun   Zhang Runchu  

Publisher: Taylor & Francis Ltd

ISSN: 0361-0926

Source: Communications in Statistics: Theory and Methods, Vol.39, Iss.7, 2010-01, pp. : 1299-1320

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Abstract

We propose a new test for comparison of two regression curves, which integrates generalized likelihood ratio (GLR) statistics (Fan et al., 2001) with the data-driven criterion of selecting the smoothing parameter proposed by Guerre and Lavergne (2005). The local linear nonparametric estimator is used to construct the GLR statistic. We prove that the corresponding test statistic is asymptotically normal and free of nuisance parameters and covariate designs under the null hypothesis. The test adapts to the unknown smoothness of the difference between two regression functions and can detect local alternatives converging to the null hypothesis at rate [image omitted]. The wild bootstrap technique is used to approximate the critical values of the test for small samples. A simulation study is conducted to investigate the finite sample properties of the new adaptive test and to compare it with some other available procedures in the literature. The simulation results demonstrate the sensitivity and robustness of the proposed approach.