Testing heteroscedasticity in nonparametric regression |
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Authors: | H. Dette,& A. Munk |
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Affiliation: | Ruhr-Universität Bochum, Germany |
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Abstract: | The importance of being able to detect heteroscedasticity in regression is widely recognized because efficient inference for the regression function requires that heteroscedasticity is taken into account. In this paper a simple consistent test for heteroscedasticity is proposed in a nonparametric regression set-up. The test is based on an estimator for the best L 2-approximation of the variance function by a constant. Under mild assumptions asymptotic normality of the corresponding test statistic is established even under arbitrary fixed alternatives. Confidence intervals are obtained for a corresponding measure of heteroscedasticity. The finite sample performance and robustness of these procedures are investigated in a simulation study and Box-type corrections are suggested for small sample sizes. |
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Keywords: | Homoscedastic errors Model diagnostics Nonparametric regression |
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