Publication | Open Access
A New Test for the Parametric Form of the Variance Function in Non-Parametric Regression
84
Citations
44
References
2007
Year
Applied EconometricsRegression AnalysisParametric FormTime Series EconometricsBiostatisticsPublic HealthEstimation TheoryStatisticsEstimation StatisticEconometric MethodFunctional Data AnalysisSpecific Parametric FormEconometric ModelBootstrap ResamplingBootstrap ApproximationNew TestBusinessEconometricsStatistical InferenceMultivariate AnalysisNon-parametric RegressionSemi-nonparametric Estimation
Summary In the common non-parametric regression model the problem of testing for the parametric form of the conditional variance is considered. A stochastic process based on the difference between the empirical processes that are obtained from the standardized non-parametric residuals under the null hypothesis (of a specific parametric form of the variance function) and the alternative is introduced and its weak convergence established. This result is used for the construction of a Kolmogorov–Smirnov and a Cramér–von Mises type of statistic for testing the parametric form of the conditional variance. The consistency of a bootstrap approximation is established, and the finite sample properties of this approximation are investigated by means of a simulation study. In particular the new procedure is compared with some of the currently available methods for this problem.
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