In this article we study the estimation of the location of jump points in the first derivative (referred to as kinks) of a regression function μ in two random design models with different long-range dependent (LRD) structures. The method is based on the zero-crossing technique and makes use of high-order kernels. The rate of convergence of the estimator is contingent on the level of dependence and the smoothness of the regression function μ. In one of the models, the convergence rate is the same as the minimax rate for kink estimation in the fixed design scenario with i.i.d. errors which suggests that the method is optimal in the minimax sense.39 page(s
We consider nonparametric identification and estimation in a nonseparable model where a continuous ...
Theoretical thesis.Bibliography: pages 51-53.1. Introduction -- 2. Notations and assumptions -- 3. R...
This paper considers robust inference in threshold regression models when the practitioners do not k...
In this thesis, the main concern is to analyse change-points in a non-parametric regression model. M...
In this paper, a lower bound is determined in the minimax sense for change point estimators of the f...
Standard Regression Discontinuity (RD) designs exploit a discontinuity (a jump) in the treatment pro...
Abstract We consider a fixed-design regression model with long-range dependent errors which form a m...
In a Regression Kink (RK) design with a finite sample, a confounding smooth nonlinear relationship b...
AbstractThe effect of dependent errors in fixed-design, nonparametric regression is investigated. It...
AbstractWe study a random design regression model generated by dependent observations, when the regr...
AbstractWe consider the problem of estimating a regression function with nonrandom design points and...
We consider a fixed-design regression model with long-range dependent errors and in-troduce an artif...
We consider nonparametic identification of the average marginal effect of a continuous endogenous re...
The Regression Kink (RK) design is an increasingly popular empirical method, with more than 20 studi...
Regression Discontinuity (RD) models identify local treatment effects by associating a discrete chan...
We consider nonparametric identification and estimation in a nonseparable model where a continuous ...
Theoretical thesis.Bibliography: pages 51-53.1. Introduction -- 2. Notations and assumptions -- 3. R...
This paper considers robust inference in threshold regression models when the practitioners do not k...
In this thesis, the main concern is to analyse change-points in a non-parametric regression model. M...
In this paper, a lower bound is determined in the minimax sense for change point estimators of the f...
Standard Regression Discontinuity (RD) designs exploit a discontinuity (a jump) in the treatment pro...
Abstract We consider a fixed-design regression model with long-range dependent errors which form a m...
In a Regression Kink (RK) design with a finite sample, a confounding smooth nonlinear relationship b...
AbstractThe effect of dependent errors in fixed-design, nonparametric regression is investigated. It...
AbstractWe study a random design regression model generated by dependent observations, when the regr...
AbstractWe consider the problem of estimating a regression function with nonrandom design points and...
We consider a fixed-design regression model with long-range dependent errors and in-troduce an artif...
We consider nonparametic identification of the average marginal effect of a continuous endogenous re...
The Regression Kink (RK) design is an increasingly popular empirical method, with more than 20 studi...
Regression Discontinuity (RD) models identify local treatment effects by associating a discrete chan...
We consider nonparametric identification and estimation in a nonseparable model where a continuous ...
Theoretical thesis.Bibliography: pages 51-53.1. Introduction -- 2. Notations and assumptions -- 3. R...
This paper considers robust inference in threshold regression models when the practitioners do not k...