AbstractIn this paper we define a robust conditional location functional without requiring any moment condition. We apply the nonparametric proposals considered by C. Stone (Ann. Statist. 5 (1977), 595–645) to this functional equation in order to obtain strongly consistent, robust nonparametric estimates of the regression function. We give some examples by using nearest neighbor weights or weights based on kernel methods under no assumptions whatsoever on the probability measure of the vector (X,Y). We also derive strong convergence rates and the asymptotic distribution of the proposed estimates
AbstractFor a well-known class of nonparametric regression function estimators of nearest neighbor t...
In a missing data setting, we have a sample in which a vector of explanatory variables xi is observe...
Local kernel estimates and B-spline estimates are considered in the nonparametric regression and the...
In this paper we define a robust conditional location functional without requiring any moment condit...
AbstractIn this paper we define a robust conditional location functional without requiring any momen...
AbstractA robust estimator of the regression function is proposed combining kernel methods as introd...
Consider a stationary time series (Xt, Yt), t = 0, ±1, … with Xt being Rd-valued and Yt real-valued....
[[abstract]]The bias of kernel methods based on local constant fits can have an adverse effect when ...
AbstractConsider a stationary time series (Xt, Yt), t = 0, ±1, … with Xt being Rd-valued and Yt real...
Nonparametric regression methods provide an alternative approach to parametric estimation that requi...
Let y, ,..., Yn denote independent real-valued observations, each distributed accord-ing to a densit...
Consider the problem of estimating the mean function underlying a set of noisy data. Least squares i...
Nonparametric procedures use weak assumptions such as continuity of the distribution so that they ar...
Consider the random vector (X; Y ), where X is completely observed and Y is subject to random right ...
The robustness properties of conditional normal-theory procedures of inference for a location parame...
AbstractFor a well-known class of nonparametric regression function estimators of nearest neighbor t...
In a missing data setting, we have a sample in which a vector of explanatory variables xi is observe...
Local kernel estimates and B-spline estimates are considered in the nonparametric regression and the...
In this paper we define a robust conditional location functional without requiring any moment condit...
AbstractIn this paper we define a robust conditional location functional without requiring any momen...
AbstractA robust estimator of the regression function is proposed combining kernel methods as introd...
Consider a stationary time series (Xt, Yt), t = 0, ±1, … with Xt being Rd-valued and Yt real-valued....
[[abstract]]The bias of kernel methods based on local constant fits can have an adverse effect when ...
AbstractConsider a stationary time series (Xt, Yt), t = 0, ±1, … with Xt being Rd-valued and Yt real...
Nonparametric regression methods provide an alternative approach to parametric estimation that requi...
Let y, ,..., Yn denote independent real-valued observations, each distributed accord-ing to a densit...
Consider the problem of estimating the mean function underlying a set of noisy data. Least squares i...
Nonparametric procedures use weak assumptions such as continuity of the distribution so that they ar...
Consider the random vector (X; Y ), where X is completely observed and Y is subject to random right ...
The robustness properties of conditional normal-theory procedures of inference for a location parame...
AbstractFor a well-known class of nonparametric regression function estimators of nearest neighbor t...
In a missing data setting, we have a sample in which a vector of explanatory variables xi is observe...
Local kernel estimates and B-spline estimates are considered in the nonparametric regression and the...