This paper shows nonparametric identification of dynamic panel data models with nonseparable heterogeneity and dynamic selection by nonparametrically differencing out these two sources of bias. For T = 3, the model is identified by using a proxy variable. For T = 6, the three additional periods construct the proxy to establish identification. As a consequence of these identification results, a constrained maximum likelihood criterion follows, which corrects for selection and allows for one-step estimation. Applying this method, I investigate whether SES affects adult mortality. The method circumvents the survivorship bias and accounts for unobserved heterogeneity. I find that employment has protective effects on survival for the male adults...
We propose conditions under which parameters of fixed-effect dynamic models are identified with uneq...
Recent work on nonparametric identification of average partial effects (APEs) from panel data requir...
Recent work on nonparametric identification of average partial effects (APEs) from panel data requir...
This paper shows nonparametric identification of dynamic panel data models with nonseparable heterog...
The data generating process (DGP) for generic dynamic panel data consists of a law of state dynamics...
In this thesis estimators for "fixed-effects" panel data sample selection models are discussed, most...
Microeconomic panel data, also known as longitudinal data or repeated measures, allow the researcher...
This paper studies dynamic panel data linear models that allow multiplicative and additive heterogen...
This paper considers nonparametric identification of nonlinear dynamic models for panel data with un...
The traditional formulation of the attrition problem in econometrics treats it as a special case of ...
An exact maximum likelihood method is developed for the estimation of parameters in a nonlinear non-...
The main purpose of this paper is to estimate panel data models with endogenous regressors and nonad...
The paper addresses a computational method implementing a standard Dynamic Panel Data model with Gen...
We analyse the properties of generalised method of moments-instrumental variables (GMM-IV) estimator...
Dynamic panel models are a popular approach to study interrelationships between repeatedly measured ...
We propose conditions under which parameters of fixed-effect dynamic models are identified with uneq...
Recent work on nonparametric identification of average partial effects (APEs) from panel data requir...
Recent work on nonparametric identification of average partial effects (APEs) from panel data requir...
This paper shows nonparametric identification of dynamic panel data models with nonseparable heterog...
The data generating process (DGP) for generic dynamic panel data consists of a law of state dynamics...
In this thesis estimators for "fixed-effects" panel data sample selection models are discussed, most...
Microeconomic panel data, also known as longitudinal data or repeated measures, allow the researcher...
This paper studies dynamic panel data linear models that allow multiplicative and additive heterogen...
This paper considers nonparametric identification of nonlinear dynamic models for panel data with un...
The traditional formulation of the attrition problem in econometrics treats it as a special case of ...
An exact maximum likelihood method is developed for the estimation of parameters in a nonlinear non-...
The main purpose of this paper is to estimate panel data models with endogenous regressors and nonad...
The paper addresses a computational method implementing a standard Dynamic Panel Data model with Gen...
We analyse the properties of generalised method of moments-instrumental variables (GMM-IV) estimator...
Dynamic panel models are a popular approach to study interrelationships between repeatedly measured ...
We propose conditions under which parameters of fixed-effect dynamic models are identified with uneq...
Recent work on nonparametric identification of average partial effects (APEs) from panel data requir...
Recent work on nonparametric identification of average partial effects (APEs) from panel data requir...