Publication | Closed Access
Estimating the error variance in nonparametric regression by a covariate-matched u-statistic
58
Citations
17
References
2003
Year
Random DesignEngineeringOptimal EstimatorsData ScienceError VarianceRobust StatisticEstimation StatisticMatching TechniqueDensity EstimationEconometricsBiostatisticsStatistical InferenceNonparametric RegressionPublic HealthEstimation TheoryFunctional Data AnalysisStatisticsSemi-nonparametric Estimation
For nonparametric regression models with fixed and random design, two classes of estimators for the error variance have been introduced: second sample moments based on residuals from a nonparametric fit, and difference-based estimators. The former are asymptotically optimal but require estimating the regression function; the latter are simple but have larger asymptotic variance. For nonparametric regression models with random covariates, we introduce a class of estimators for the error variance that are related to difference-based estimators: covariate-matched U-statistics. We give conditions on the random weights involved that lead to asymptotically optimal estimators of the error variance. Our explicit construction of the weights uses a kernel estimator for the covariate density. Keywords: Empirical Estimatori.i.d. RepresentationEfficient EstimatorKernel EstimatorRelative Mean Square ErrorsCross Validation
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