Tests are developed for inference on a parameter vector whose dimension grows slowly with sample size. The statistics are based on the Lagrange Multiplier, Wald and (pseudo) Likelihood Ratio principles, admit standard normal asymptotic distributions under the null and are straightforward to compute. They are shown to be consistent and possessing non-trivial power against local alternatives. The settings considered include multiple linear regression, panel data models with fixed effects and spatial autoregressions. When a nonparametric regression function is estimated by series, we use our statistics to propose specification tests, and in semiparametric adaptive estimation we provide a test for correct error distribution specification. These...
This paper considers two classes of semiparametric nonlinear regression models, in which nonlinear c...
This paper introduces a nonparametric test for the correct specification of a linear conditional qua...
We analytically investigate size and power properties of a popular family of procedures for testing ...
Tests are developed for inference on a parameter vector whose dimension grows slowly with sample siz...
Tests are developed for inference on a parameter vector whose dimension grows slowly with sample siz...
This dissertation studies questions related to identification, estimation, and specification testing...
Thesis (Ph.D.)--University of Washington, 2021This dissertation is divided into two parts. In the fi...
This dissertation studies questions related to identification, estimation, and specification testing...
Semi-parametric and nonparametric modeling and inference have been widely studied during the last tw...
This paper proposes several tests of restricted specification in nonparametric instrumental regressi...
We analytically investigate size and power properties of a popular family of procedures for testing ...
This paper considers two classes of semiparametric nonlinear regression models, in which nonlinear c...
We propose a series-based nonparametric specification test for a regression function when data are s...
This paper presents a method to test for multimodality of an estimated kernel density of parameter e...
This paper introduces a nonparametric test for the correct specification of a linear conditional qua...
This paper considers two classes of semiparametric nonlinear regression models, in which nonlinear c...
This paper introduces a nonparametric test for the correct specification of a linear conditional qua...
We analytically investigate size and power properties of a popular family of procedures for testing ...
Tests are developed for inference on a parameter vector whose dimension grows slowly with sample siz...
Tests are developed for inference on a parameter vector whose dimension grows slowly with sample siz...
This dissertation studies questions related to identification, estimation, and specification testing...
Thesis (Ph.D.)--University of Washington, 2021This dissertation is divided into two parts. In the fi...
This dissertation studies questions related to identification, estimation, and specification testing...
Semi-parametric and nonparametric modeling and inference have been widely studied during the last tw...
This paper proposes several tests of restricted specification in nonparametric instrumental regressi...
We analytically investigate size and power properties of a popular family of procedures for testing ...
This paper considers two classes of semiparametric nonlinear regression models, in which nonlinear c...
We propose a series-based nonparametric specification test for a regression function when data are s...
This paper presents a method to test for multimodality of an estimated kernel density of parameter e...
This paper introduces a nonparametric test for the correct specification of a linear conditional qua...
This paper considers two classes of semiparametric nonlinear regression models, in which nonlinear c...
This paper introduces a nonparametric test for the correct specification of a linear conditional qua...
We analytically investigate size and power properties of a popular family of procedures for testing ...