A solution method and an estimation method for nonlinear rational expectations models are presented in this paper. The solution method can be used in forecasting and policy applications and can handle models with serial correlation and multiple viewpoint dates. When applied to linear models, the solution method yields the same results as those obtained from currently available methods that are designed specifically for linear models. It is, however, more flexible and general than these methods. The estimation method is based on the maximum likelihood principal. It is, as far as we know, the only method available for obtaining maximum likelihood estimates for nonlinear rational expectations models. The method has the advantage of being appli...
A computationally feasible method for the full information maximum-likelihood estimation of models w...
This is a preliminary draft circulated to stimulate discussion and should not be quoted without the ...
A computationally feasible method for the full information maximum likelihood estimation of models w...
This paper presents new, computationally efficient algorithms for solution and estimation of nonline...
A method to solve and estimate multivariate linear rational expectations models is described. The me...
In this paper a solution technique is developed for non-linear rational expectation models. In model...
This paper develops the Parameterized Expectations Approach (PEA) for solving nonlinear dynamic stoc...
SIGLEAvailable from British Library Lending Division - LD:3597.3859(145) / BLDSC - British Library D...
This paper shows how to compute a second-order accurate solution of a non-linear rational expectatio...
In this note, a class of nonlinear dynamic models under rational expectations is studied. A particul...
Since the onset of the rational expectations revolution in macroeconomics some 30 or more years ago,...
Since the onset of the rational expectations revolution in macroeconomics some 30 or more years ago,...
This paper develops a general modeling framework and some alternative methods for solving nonlinear ...
A framework for describing nonlinear rational expectation models is developed that synthesizes previ...
A class of dynamic, nonlinear, statistical models is introduced for the analysis of univariate time ...
A computationally feasible method for the full information maximum-likelihood estimation of models w...
This is a preliminary draft circulated to stimulate discussion and should not be quoted without the ...
A computationally feasible method for the full information maximum likelihood estimation of models w...
This paper presents new, computationally efficient algorithms for solution and estimation of nonline...
A method to solve and estimate multivariate linear rational expectations models is described. The me...
In this paper a solution technique is developed for non-linear rational expectation models. In model...
This paper develops the Parameterized Expectations Approach (PEA) for solving nonlinear dynamic stoc...
SIGLEAvailable from British Library Lending Division - LD:3597.3859(145) / BLDSC - British Library D...
This paper shows how to compute a second-order accurate solution of a non-linear rational expectatio...
In this note, a class of nonlinear dynamic models under rational expectations is studied. A particul...
Since the onset of the rational expectations revolution in macroeconomics some 30 or more years ago,...
Since the onset of the rational expectations revolution in macroeconomics some 30 or more years ago,...
This paper develops a general modeling framework and some alternative methods for solving nonlinear ...
A framework for describing nonlinear rational expectation models is developed that synthesizes previ...
A class of dynamic, nonlinear, statistical models is introduced for the analysis of univariate time ...
A computationally feasible method for the full information maximum-likelihood estimation of models w...
This is a preliminary draft circulated to stimulate discussion and should not be quoted without the ...
A computationally feasible method for the full information maximum likelihood estimation of models w...