Bias-corrected inference for multivariate nonparametric regression: model selection and oracle property
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Data
2014Autore
Giordano, Francesco
Parrella, Maria Lucia
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The local polynomial estimator is particularly affected by the curse of di-
mensionality. So, the potentialities of such a tool become ineffective for large dimensional
applications. Motivated by this, we propose a new estimation procedure based on the local
linear estimator and a nonlinearity sparseness condition, which focuses on the number
of covariates for which the gradient is not constant. Our procedure, called BID for
Bias-Inflation-Deflation, is automatic and easily applicable to models with many covariates
without any additive assumption to the model. It simultaneously gives a consistent
estimation of a) the optimal bandwidth matrix, b) the multivariate regression function and
c) the multivariate, bias-corrected, confidence bands. Moreover, it automatically identify
the relevant covariates and it separates the nonlinear from the linear effects. We do not
need pilot bandwidths. Some theoretical properties of the method are discussed in the
paper. In particular, we show the nonparametric oracle property. For linear models, the
BID automatically reaches the optimal rate Op(n−1/2), equivalent to the parametric case.
A simulation study shows a good performance of the BID procedure, compared with its
direct competitor.