• A nonparametric regression estimator is introduced which adapts to the smoothness of the unknown function being estimated. This property allows the new estimator to automatically achieve minimal bias over a large class of locally smooth functions without changing the rate at which the variance converges. Optimal convergence rates are shown to hold for both i.i.d. data and autoregressive processes satisfying strong mixing conditions. Key-Words: • nonparametric regression; autoregression; Fourier transform
Local linear fitting is a popular nonparametric method in statistical and econometric modeling. Lu a...
We present a greedy method for simultaneously performing local band-width selection and variable sel...
We consider data generating mechanisms which can be represented as mixtures of finitely many regress...
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We construct efficient robust truncated sequential estimators for the pointwise estimation problem i...
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summary:Local polynomials are used to construct estimators for the value $m(x_{0})$ of the regressio...
The effect of errors in variables in nonparametric regression estimation is examined. To account for...
International audienceWe construct a robust truncated sequential estimator for the point- wise estim...
We study the problem of nonparametric regression when the regressor is endogenous, which is an impor...
The present PhD deals with nonparametric regression using repeated measurements data. On the one han...
For kernel-based estimators, smoothness conditions ensure that the asymptotic rate at which the bias...
Local linear fitting is a popular nonparametric method in statistical and econometric modeling. Lu a...
We present a greedy method for simultaneously performing local band-width selection and variable sel...
We consider data generating mechanisms which can be represented as mixtures of finitely many regress...
Consider the problem of estimating the mean function underlying a set of noisy data. Least squares i...
We consider the model of non-regular nonparametric regression where smoothness constraints are impos...
We construct efficient robust truncated sequential estimators for the pointwise estimation problem i...
For regression analysis, some useful information may have been lost when the responses are right cen...
In a number of econometric models, rules of large-sample inference require a consistent estimate of ...
This paper presents a practical and simple fully nonparametric multivariate smoothing proc...
summary:Local polynomials are used to construct estimators for the value $m(x_{0})$ of the regressio...
The effect of errors in variables in nonparametric regression estimation is examined. To account for...
International audienceWe construct a robust truncated sequential estimator for the point- wise estim...
We study the problem of nonparametric regression when the regressor is endogenous, which is an impor...
The present PhD deals with nonparametric regression using repeated measurements data. On the one han...
For kernel-based estimators, smoothness conditions ensure that the asymptotic rate at which the bias...
Local linear fitting is a popular nonparametric method in statistical and econometric modeling. Lu a...
We present a greedy method for simultaneously performing local band-width selection and variable sel...
We consider data generating mechanisms which can be represented as mixtures of finitely many regress...