Variance estimation is an important topic in nonparametric regression. In this paper, we propose a pairwise regression method for estimating the residual variance. Specifically, we regress the squared difference between observations on the squared distance between design points, and then estimate the residual variance as the intercept. Unlike most existing difference-based estimators that require a smooth regression function, our method applies to regression models with jump discontinuities. Our method also applies to the situations where the design points are unequally spaced. Finally, we conduct extensive simulation studies to evaluate the finite-sample performance of the proposed method and compare it with some existing competitors
SUMMARY Several difference-based estimators of residual variance are compared for finite sample size...
Variance function estimation in nonparametric regression is considered. We derived the minimax rate ...
This paper proposes empirical likelihood based inference methods for causal effects identified from ...
This work develop the difference-based estimators in the repeated measurements setting for nonparame...
Since the late 90s, Regression Discontinuity (RD) designs have been widely used to estimate Local Av...
Difference-based estimators for the error variance are popular since they do not require the estimat...
Abstract: Estimating the residual variance is an important question in nonparamet-ric regression. Am...
This paper provides a fully data-driven procedure for estimating the locations of jump discontinuiti...
This article proposes a fully nonparametric kernel method to account for observed covariates in reg...
[[abstract]]A new procedure is proposed to estimate the jump location curve and surface in the two-d...
Variance function estimation in multivariate nonparametric regression is considered and the minimax ...
The regression-discontinuity design (RD) is a powerful methodological alternative to the quasi-exper...
The existing differenced estimators of error variance in nonparametric regression are interpreted a...
We study the least squares estimator in the residual variance estimation context. We show that the m...
Traditionally, non-parametric regression research has been centered on the mean estimation problem. ...
SUMMARY Several difference-based estimators of residual variance are compared for finite sample size...
Variance function estimation in nonparametric regression is considered. We derived the minimax rate ...
This paper proposes empirical likelihood based inference methods for causal effects identified from ...
This work develop the difference-based estimators in the repeated measurements setting for nonparame...
Since the late 90s, Regression Discontinuity (RD) designs have been widely used to estimate Local Av...
Difference-based estimators for the error variance are popular since they do not require the estimat...
Abstract: Estimating the residual variance is an important question in nonparamet-ric regression. Am...
This paper provides a fully data-driven procedure for estimating the locations of jump discontinuiti...
This article proposes a fully nonparametric kernel method to account for observed covariates in reg...
[[abstract]]A new procedure is proposed to estimate the jump location curve and surface in the two-d...
Variance function estimation in multivariate nonparametric regression is considered and the minimax ...
The regression-discontinuity design (RD) is a powerful methodological alternative to the quasi-exper...
The existing differenced estimators of error variance in nonparametric regression are interpreted a...
We study the least squares estimator in the residual variance estimation context. We show that the m...
Traditionally, non-parametric regression research has been centered on the mean estimation problem. ...
SUMMARY Several difference-based estimators of residual variance are compared for finite sample size...
Variance function estimation in nonparametric regression is considered. We derived the minimax rate ...
This paper proposes empirical likelihood based inference methods for causal effects identified from ...