Publication | Open Access
Nonparametric Regression with Errors in Variables
332
Citations
15
References
1993
Year
Density EstimationEngineeringNonparametric Regression EstimationRobust StatisticEstimation StatisticEconometricsPossible EstimatorsRegression AnalysisStatistical InferenceNonparametric RegressionEstimation TheoryFunctional Data AnalysisStatisticsKernel EstimatorsSemi-nonparametric Estimation
The effect of errors in variables in nonparametric regression estimation is examined. To account for errors in covariates, deconvolution is involved in the construction of a new class of kernel estimators. It is shown that optimal local and global rates of convergence of these kernel estimators can be characterized by the tail behavior of the characteristic function of the error distribution. In fact, there are two types of rates of convergence according to whether the error is ordinary smooth or super smooth. It is also shown that these results hold uniformly over a class of joint distributions of the response and the covariate, which is rich enough for many practical applications. Furthermore, to achieve optimality, we show that the convergence rates of all possible estimators have a lower bound possessed by the kernel estimators.
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