This paper considers the problem of choosing the regularization parameter and the smoothing parameter in nonparametric instrumental variables estimation. We propose a simple Mallows’ Cp-type criterion to select these two parameters simultaneously. We show that the proposed selection criterion is optimal in the sense that the selected estimate asymptotically achieves the lowest possible mean squared error among all candidates. To account for model uncertainty, we introduce a new model averaging estimator for nonparametric instrumental variables regressions. We propose a Mallows criterion for the weight selection and demonstrate its asymptotic optimality. Monte Carlo simulations show that both selection and averaging methods generally achieve...
The use of a nonparametrically generated instrumental variable in estimating a single-equation linea...
We consider the problem of estimating the structural function in nonpara-metric instrumental regress...
We extend nonparametric regression smoothing splines to a context where there is endogeneity and ins...
This paper considers the problem of choosing the regularization parameter and the smoothing paramete...
This paper considers the problem of choosing the regularization parameter and the smoothing paramete...
This paper presents recent developments in model selection and model averaging for parametric and no...
Model averaging (MA) estimators in the linear instrumental variables regression framework are consi...
Penalized methods are becoming more and more popular in statistical research. This dissertation rese...
This paper considers the instrumental variable regression model when there is uncertainty about the ...
We consider the problem of estimating the structural function in nonparametric instrumental regressi...
We consider the problem of estimating the structural function in nonparametric instrumental regressi...
Variable selection methods and model selection approaches are valuable statistical tools, which are ...
This article studies optimal model averaging for partially linear models with heteroscedasticity. A ...
We consider the problem of estimating the value `(ϕ) of a linear functional, where the structural fu...
Instrumental variables are commonly used in statistics, econometrics, and epidemiology to obtain con...
The use of a nonparametrically generated instrumental variable in estimating a single-equation linea...
We consider the problem of estimating the structural function in nonpara-metric instrumental regress...
We extend nonparametric regression smoothing splines to a context where there is endogeneity and ins...
This paper considers the problem of choosing the regularization parameter and the smoothing paramete...
This paper considers the problem of choosing the regularization parameter and the smoothing paramete...
This paper presents recent developments in model selection and model averaging for parametric and no...
Model averaging (MA) estimators in the linear instrumental variables regression framework are consi...
Penalized methods are becoming more and more popular in statistical research. This dissertation rese...
This paper considers the instrumental variable regression model when there is uncertainty about the ...
We consider the problem of estimating the structural function in nonparametric instrumental regressi...
We consider the problem of estimating the structural function in nonparametric instrumental regressi...
Variable selection methods and model selection approaches are valuable statistical tools, which are ...
This article studies optimal model averaging for partially linear models with heteroscedasticity. A ...
We consider the problem of estimating the value `(ϕ) of a linear functional, where the structural fu...
Instrumental variables are commonly used in statistics, econometrics, and epidemiology to obtain con...
The use of a nonparametrically generated instrumental variable in estimating a single-equation linea...
We consider the problem of estimating the structural function in nonpara-metric instrumental regress...
We extend nonparametric regression smoothing splines to a context where there is endogeneity and ins...