Simulation of stochastic non-linear econometric models is known to have desirable analytic content only when the error terms affecting the structural equations are incorporated within the simulation procedure. This paper demonstrates that stochastic simulation, repeated solution of a model with error terms explicitly incorporated in quantified form, results in an empirical distribution function for the endogenous variables which converges uniformly to the true distribution function. This result allows the construction of confidence intervals on the paths of the endogenous variables of the model. Furthermore the Bayes' Principle is extended to cover optimal policy determination for a finite set of available policies for stochastic non-linear...
Stochastic Simulations for Inference in Nonlinear Errors-in-Variables Models, Handbook of Statistics...
Different stochastic simulation methods are used in order to check the robustness of the outcome of ...
In the process of trying to estimate a behavioral equation (either structural or reduced from) deriv...
This paper describes a method for solving, estimating and testing a fully specified nonlinear stocha...
In a stochastic equilibrium model some stochastic processes are usually exogenously given, while oth...
The complete validation of an econometric model is a process which involves a formidable number of a...
The importance of the simulation (both deterministic and stochastic) in the validation process of a ...
We develop numerically stable stochastic simulation approaches for solving dynamic economic models. ...
This paper provides a general framework for the simulation of stochastic dynamic models. Our analysi...
One aspect of model behaviour that is of interest to the model builder is sensitivity to different f...
When advising policy we face the fundamental problem that economic processes are connected with unce...
The study concentrated on demonstrating how non-linear modelling can be useful to investigate the be...
The stochastic simulation of an econometric model is an application of Monte Carlo methods. Determin...
Financial variables, such as asset returns in international stock and bond markets or interest rates...
ESTIMATION BY SIMULATION* A formal econometric treatment of the estimation of the parameters of a fu...
Stochastic Simulations for Inference in Nonlinear Errors-in-Variables Models, Handbook of Statistics...
Different stochastic simulation methods are used in order to check the robustness of the outcome of ...
In the process of trying to estimate a behavioral equation (either structural or reduced from) deriv...
This paper describes a method for solving, estimating and testing a fully specified nonlinear stocha...
In a stochastic equilibrium model some stochastic processes are usually exogenously given, while oth...
The complete validation of an econometric model is a process which involves a formidable number of a...
The importance of the simulation (both deterministic and stochastic) in the validation process of a ...
We develop numerically stable stochastic simulation approaches for solving dynamic economic models. ...
This paper provides a general framework for the simulation of stochastic dynamic models. Our analysi...
One aspect of model behaviour that is of interest to the model builder is sensitivity to different f...
When advising policy we face the fundamental problem that economic processes are connected with unce...
The study concentrated on demonstrating how non-linear modelling can be useful to investigate the be...
The stochastic simulation of an econometric model is an application of Monte Carlo methods. Determin...
Financial variables, such as asset returns in international stock and bond markets or interest rates...
ESTIMATION BY SIMULATION* A formal econometric treatment of the estimation of the parameters of a fu...
Stochastic Simulations for Inference in Nonlinear Errors-in-Variables Models, Handbook of Statistics...
Different stochastic simulation methods are used in order to check the robustness of the outcome of ...
In the process of trying to estimate a behavioral equation (either structural or reduced from) deriv...