We investigate nonparametric curve estimation (including density, distribution, hazard, conditional density, and regression functions estimation) by kernel methods when the observed data satisfy a strong mixing condition. In a first attempt we show asymptotic equivalence of average square errors, integrated square errors, and mean integrated square errors. These results are extensions to dependent data of several works, in particular of those by Marron and Härdle (1986, J. Multivariate Anal. 20 91-113). Then we give precise asymptotic evaluations of these errors.functional estimation kernel methods [alpha]-mixing condition quadratic errors
International audienceWe investigate the estimation of the integral of the square of a multidimensio...
Summary. Estimation of a regression function is a well-known problem in the context of errors in var...
AbstractAn asymptotic theory is developed for series estimation of nonparametric and semiparametric ...
AbstractWe investigate nonparametric curve estimation (including density, distribution, hazard, cond...
AbstractUnder the i.i.d. condition, Marron and Härdle (1986, J. Multivariate Anal.20 91-113) showed ...
In this paper, we consider nonparametric estimation for dependent data, where the observations do no...
AbstractIn this paper a method for obtaining a.s. consistency in nonparametric estimation is present...
In this paper a method for obtaining a.s. consistency in nonparametric estimation is presented which...
AbstractNonparametric estimation of the conditional mean function for additive models is investigate...
We consider the nonparametric estimation of the regression functions for dependentdata. Suppose that...
The paper considers nonparametric estimation of Value at Risk (VaR) and associated standard error es...
The effect of errors in variables in nonparametric regression estimation is examined. To account for...
For j=1, 2,..., let {Zj}={(Xj, Yj)} be a strictly stationary sequence of random variables, where the...
In many regression applications both the independent and dependent variables are measured with error...
Consider the nonparametric regression model Y=m(X) + ε, where the function m is smooth but unknown, ...
International audienceWe investigate the estimation of the integral of the square of a multidimensio...
Summary. Estimation of a regression function is a well-known problem in the context of errors in var...
AbstractAn asymptotic theory is developed for series estimation of nonparametric and semiparametric ...
AbstractWe investigate nonparametric curve estimation (including density, distribution, hazard, cond...
AbstractUnder the i.i.d. condition, Marron and Härdle (1986, J. Multivariate Anal.20 91-113) showed ...
In this paper, we consider nonparametric estimation for dependent data, where the observations do no...
AbstractIn this paper a method for obtaining a.s. consistency in nonparametric estimation is present...
In this paper a method for obtaining a.s. consistency in nonparametric estimation is presented which...
AbstractNonparametric estimation of the conditional mean function for additive models is investigate...
We consider the nonparametric estimation of the regression functions for dependentdata. Suppose that...
The paper considers nonparametric estimation of Value at Risk (VaR) and associated standard error es...
The effect of errors in variables in nonparametric regression estimation is examined. To account for...
For j=1, 2,..., let {Zj}={(Xj, Yj)} be a strictly stationary sequence of random variables, where the...
In many regression applications both the independent and dependent variables are measured with error...
Consider the nonparametric regression model Y=m(X) + ε, where the function m is smooth but unknown, ...
International audienceWe investigate the estimation of the integral of the square of a multidimensio...
Summary. Estimation of a regression function is a well-known problem in the context of errors in var...
AbstractAn asymptotic theory is developed for series estimation of nonparametric and semiparametric ...