We examine challenges to estimation and inference when the objects of interest are nondifferentiable functionals of the underlying data distribution. This situation arises in a number of applications of bounds analysis and moment inequality models, and in recent work on estimating optimal dynamic treatment regimes. Drawing on earlier work relating differentiability to the existence of unbiased and regular estimators, we show that if the target object is not continuously differentiable in the parameters of the data distribution, there exist no locally asymptotically unbiased estimators and no regular estimators. This places strong limits on estimators, bias correction methods, and inference procedures
This paper develops tests for inequality constraints of nonparametric regression functions. The test...
This paper considers inference on functionals of semi/nonparametric conditional moment restrictions ...
This paper develops tests for inequality constraints of nonparametric regression functions. The test...
We examine challenges to estimation and inference when the objects of interest are nondifferentiable...
We examine challenges to estimation and inference when the objects of interest are nondif-ferentiabl...
In a variety of applications, including nonparametric instrumental variable (NPIV) analysis, proxima...
We argue that common features of non-parametric estimation appear in parametric cases as well if the...
Many quantities of interest in modern statistical analysis are non-smooth functionals of the underly...
This paper deals with the Fisher-consistency, weak continuity and differentiability of estimating fu...
General characterizations of valid confidence sets and tests in problems which involve locally almos...
AbstractIt has been shown (Reeds, 1976, Ph.D. dissertation, Harvard University) that the remainder t...
We propose a method to conduct uniform inference for the (optimal) value function, that is, the func...
The existence of a uniformly consistent estimator for a particular parameter is well-known to depend...
Estimators which have locally uniform expansions are shown in this paper to be asymptotically equiva...
We review some of the recent results obtained for constrained estimation, involving possibly nondiff...
This paper develops tests for inequality constraints of nonparametric regression functions. The test...
This paper considers inference on functionals of semi/nonparametric conditional moment restrictions ...
This paper develops tests for inequality constraints of nonparametric regression functions. The test...
We examine challenges to estimation and inference when the objects of interest are nondifferentiable...
We examine challenges to estimation and inference when the objects of interest are nondif-ferentiabl...
In a variety of applications, including nonparametric instrumental variable (NPIV) analysis, proxima...
We argue that common features of non-parametric estimation appear in parametric cases as well if the...
Many quantities of interest in modern statistical analysis are non-smooth functionals of the underly...
This paper deals with the Fisher-consistency, weak continuity and differentiability of estimating fu...
General characterizations of valid confidence sets and tests in problems which involve locally almos...
AbstractIt has been shown (Reeds, 1976, Ph.D. dissertation, Harvard University) that the remainder t...
We propose a method to conduct uniform inference for the (optimal) value function, that is, the func...
The existence of a uniformly consistent estimator for a particular parameter is well-known to depend...
Estimators which have locally uniform expansions are shown in this paper to be asymptotically equiva...
We review some of the recent results obtained for constrained estimation, involving possibly nondiff...
This paper develops tests for inequality constraints of nonparametric regression functions. The test...
This paper considers inference on functionals of semi/nonparametric conditional moment restrictions ...
This paper develops tests for inequality constraints of nonparametric regression functions. The test...