This paper considers a nonparametric regression model for cross-sectional data in the presence of common shocks. Common shocks are allowed to be very general in nature; they do not need to be finite dimensional with a known (small) number of factors. I investigate the properties of the Nadaraya-Watson kernel estimator and determine how general the common shocks can be while still obtaining meaningful kernel estimates. Restrictions on the common shocks are necessary because kernel estimators typically manipulate conditional densities, and conditional densities do not necessarily exist in the present case. By appealing to disintegration theory, I provide sufficient conditions for the existence of such conditional densities and show that the e...
Nonparametric kernel estimation of density and conditional mean is widely used, but many of the poin...
AbstractAn asymptotic theory is developed for series estimation of nonparametric and semiparametric ...
This paper considers a nonstandard kernel regression for strongly mixing processes when the regresso...
This paper considers a nonparametric regression model for cross-sectional data in the presence of co...
This paper considers a nonparametric regression model for cross-sectional data in the presence of co...
This paper considers a nonparametric regression model for cross-sectional data in the presence of co...
This paper develops a novel asymptotic theory for panel models with common shocks. We assume that co...
This paper develops a novel asymptotic theory for panel models with common shocks. We assume that co...
This paper considers regression models for cross-section data that exhibit cross-section dependence ...
This paper develops a novel asymptotic theory for panel models with common shocks. We assume that co...
The effect of errors in variables in nonparametric regression estimation is examined. To account for...
The effect of errors in variables in nonparametric regression estimation is examined. To account for...
In a regression problem the relationship between an explanatory variable X and a response variable Y...
This paper studies nonlinear cointegration models in which the structural coefficients may evolve sm...
This paper studies nonlinear cointegration models in which the structural coefficients may evolve sm...
Nonparametric kernel estimation of density and conditional mean is widely used, but many of the poin...
AbstractAn asymptotic theory is developed for series estimation of nonparametric and semiparametric ...
This paper considers a nonstandard kernel regression for strongly mixing processes when the regresso...
This paper considers a nonparametric regression model for cross-sectional data in the presence of co...
This paper considers a nonparametric regression model for cross-sectional data in the presence of co...
This paper considers a nonparametric regression model for cross-sectional data in the presence of co...
This paper develops a novel asymptotic theory for panel models with common shocks. We assume that co...
This paper develops a novel asymptotic theory for panel models with common shocks. We assume that co...
This paper considers regression models for cross-section data that exhibit cross-section dependence ...
This paper develops a novel asymptotic theory for panel models with common shocks. We assume that co...
The effect of errors in variables in nonparametric regression estimation is examined. To account for...
The effect of errors in variables in nonparametric regression estimation is examined. To account for...
In a regression problem the relationship between an explanatory variable X and a response variable Y...
This paper studies nonlinear cointegration models in which the structural coefficients may evolve sm...
This paper studies nonlinear cointegration models in which the structural coefficients may evolve sm...
Nonparametric kernel estimation of density and conditional mean is widely used, but many of the poin...
AbstractAn asymptotic theory is developed for series estimation of nonparametric and semiparametric ...
This paper considers a nonstandard kernel regression for strongly mixing processes when the regresso...