We propose an easy-to-implement simulated maximum likelihood estimator for dynamic models where no closed-form representation of the likelihood function is available. Our method can handle any simulable model without latent dynamics. Using simulated observations, we nonparametrically estimate the unknown density by kernel methods, and then construct a likelihood function that can be maximized. We prove that this nonparametric simulated maximum likelihood (NPSML) estimator is consistent and asymptotically efficient. The higher-order impact of simulations and kernel smoothing on the resulting estimator is also analyzed; in particular, it is shown that the NPSML does not suffer from the usual curse of dimensionality associated with kernel esti...
This paper introduces a Monte Carlo method for maximum likelihood inference in the context of discre...
While likelihood-based inference and its variants provide a statistically efficient and widely appli...
We compare the performance of maximum likelihood (ML) and simulated method of moments (SMM) estimat...
This paper introduces a new class of parameter estimators for dynamic models, called Simulated Nonpa...
We propose a nonparametric simulated maximum likelihood estimation (NPSMLE) with built-in nonlinear ...
This paper introduces a new class of parameter estimators for dynamic models, called simulated non-p...
This paper introduces a new parameter estimator of dynamic models in which the state is a multidimen...
Abstract. Given a model that can be simulated, conditional moments at a trial parameter value can be...
In this paper a method is developed and implemented to provide the simulated maximum likelihood esti...
Nonlinear stochastic parametric models are widely used in various fields. However, for these models,...
This paper develops non-parametric techniques for dynamic models whose data have unknown probability...
Given a model that can be simulated, conditional moments at a trial parameter value can be calculate...
This paper introduces a new parameter estimator of dynamic models in which the state is a multidimen...
We propose a simple, general and computationally efficient algorithm for maximum likelihood estima- ...
Indirect inference estimators (i.e., simulation-based minimum distance estimators) in a parametric m...
This paper introduces a Monte Carlo method for maximum likelihood inference in the context of discre...
While likelihood-based inference and its variants provide a statistically efficient and widely appli...
We compare the performance of maximum likelihood (ML) and simulated method of moments (SMM) estimat...
This paper introduces a new class of parameter estimators for dynamic models, called Simulated Nonpa...
We propose a nonparametric simulated maximum likelihood estimation (NPSMLE) with built-in nonlinear ...
This paper introduces a new class of parameter estimators for dynamic models, called simulated non-p...
This paper introduces a new parameter estimator of dynamic models in which the state is a multidimen...
Abstract. Given a model that can be simulated, conditional moments at a trial parameter value can be...
In this paper a method is developed and implemented to provide the simulated maximum likelihood esti...
Nonlinear stochastic parametric models are widely used in various fields. However, for these models,...
This paper develops non-parametric techniques for dynamic models whose data have unknown probability...
Given a model that can be simulated, conditional moments at a trial parameter value can be calculate...
This paper introduces a new parameter estimator of dynamic models in which the state is a multidimen...
We propose a simple, general and computationally efficient algorithm for maximum likelihood estima- ...
Indirect inference estimators (i.e., simulation-based minimum distance estimators) in a parametric m...
This paper introduces a Monte Carlo method for maximum likelihood inference in the context of discre...
While likelihood-based inference and its variants provide a statistically efficient and widely appli...
We compare the performance of maximum likelihood (ML) and simulated method of moments (SMM) estimat...