This paper uses synthetic data and different scenarios to test treatments for endogeneity problems under different parameter settings. The model uses initial conditions and provides the solution for a hypothetical equation system with an embedded endogeneity problem. The behavioral and statistical assumptions are underlined as they are used through this research. A methodology is proposed for constructing and computing simulation scenarios. The econometric modeling of the scenarios is developed accordingly with the feedback obtained from previous scenarios. The inputs for these scenarios are synthetic data, which are constructed using random number machines and/or Monte Carlo simulations. The outputs of the scenarios are the model estimator...
This paper develops a simulation estimation algorithm that is particularly useful for estimating dyn...
This paper explores the uniformity of inference for parameters of interest in nonlinear models with ...
The production of synthetic datasets has been proposed as a statistical disclosure control solution ...
Although the presence of the endogeneity is frequently observed in economic production processes, it...
This paper proposes an alternative solution to the endogeneity problem by explicitly modeling the jo...
The proposed method attempts to contribute towards the econometric and simulation applied risk manag...
Endogeneity, and the distortions on the estimation of economic models that it causes, is a usual pro...
Simulation of stochastic non-linear econometric models is known to have desirable analytic content o...
Background. Many different simulation frameworks, in different topics, need to treat realistic datas...
This dissertation consists of three stand-alone chapters, each of which investigates a specific endo...
This paper investigates the nature of the IV method for tackling endogeneity. By tracing the rise an...
This work presents an empirical analysis of popular scenario generation methods for stochastic optim...
Different kinds of endogeneity problems in Random Utility Models of recreation demand have been stud...
International audienceIn this paper we develop a test to detect the presence of endogeneity in diffe...
This thesis is concerned with specifying and estimating multivariate models in discrete data setting...
This paper develops a simulation estimation algorithm that is particularly useful for estimating dyn...
This paper explores the uniformity of inference for parameters of interest in nonlinear models with ...
The production of synthetic datasets has been proposed as a statistical disclosure control solution ...
Although the presence of the endogeneity is frequently observed in economic production processes, it...
This paper proposes an alternative solution to the endogeneity problem by explicitly modeling the jo...
The proposed method attempts to contribute towards the econometric and simulation applied risk manag...
Endogeneity, and the distortions on the estimation of economic models that it causes, is a usual pro...
Simulation of stochastic non-linear econometric models is known to have desirable analytic content o...
Background. Many different simulation frameworks, in different topics, need to treat realistic datas...
This dissertation consists of three stand-alone chapters, each of which investigates a specific endo...
This paper investigates the nature of the IV method for tackling endogeneity. By tracing the rise an...
This work presents an empirical analysis of popular scenario generation methods for stochastic optim...
Different kinds of endogeneity problems in Random Utility Models of recreation demand have been stud...
International audienceIn this paper we develop a test to detect the presence of endogeneity in diffe...
This thesis is concerned with specifying and estimating multivariate models in discrete data setting...
This paper develops a simulation estimation algorithm that is particularly useful for estimating dyn...
This paper explores the uniformity of inference for parameters of interest in nonlinear models with ...
The production of synthetic datasets has been proposed as a statistical disclosure control solution ...