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arxiv: 1105.1646 · v1 · pith:U6UAMUTJnew · submitted 2011-05-09 · 🧮 math.ST · stat.TH

Pointwise Adaptive M-estimation in Nonparametric Regression

classification 🧮 math.ST stat.TH
keywords estimatorregressionadaptiveconstructdensitylocalnonparametricrandom
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This paper deals with the nonparametric estimation in heteroscedastic regression $ Y_i=f(X_i)+\xi_i, \: i=1,...,n $, with incomplete information, i.e. each real random variable $ \xi_i $ has a density $ g_{i} $ which is unknown to the statistician. The aim is to estimate the regression function $ f $ at a given point. Using a local polynomial fitting from M-estimator denoted $ \hat f^h $ and applying Lepski's procedure for the bandwidth selection, we construct an estimator $ \hat f^{\hat h} $ which is adaptive over the collection of isotropic H\"{o}lder classes. In particular, we establish new exponential inequalities to control deviations of local M-estimators allowing to construct the minimax estimator. The advantage of this estimator is that it does not depend on densities of random errors and we only assume that the probability density functions are symmetric and monotonically on $ \bR_+ $. It is important to mention that our estimator is robust compared to extreme values of the noise.

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