Publication | Closed Access
Testing Heteroscedasticity In Nonparametric Regression
124
Citations
12
References
1998
Year
Simple Consistent TestVariance FunctionEstimation StatisticBox-type CorrectionsEconometricsBiostatisticsStatistical InferenceRegression AnalysisNonparametric RegressionStatisticsRegression TestingSemi-nonparametric Estimation
Summary 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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