This paper studies the econometrics of computed dynamic models. Since these models generally lack a closed-form solution, their policy functions are approximated by numerical methods. Hence, the researcher can only evaluate an approximated likelihood associated with the approximated policy function rather than the exact likelihood implied by the exact policy function. What are the consequences for inference of the use of approximated likelihoods? First, we find conditions under which, as the approximated policy function converges to the exact policy, the approximated likelihood also converges to the exact likelihood. Second, we show that second order approximation errors in the policy function, which almost always are ignored by researchers...
This paper provides a general framework for the simulation of stochastic dynamic models. Our analysi...
In the following article we consider approximate Bayesian parameter inference for observation driven...
Approximate Bayesian Computation is a family of Monte Carlo methods used for likelihood-free Bayesia...
This paper studies the econometrics of computed dynamic models. Since these models generally lack a ...
This paper studies the econometrics of computed dynamic models. Since these models generally lack a ...
We show by counterexample that Proposition 2 in Fernandez-Villaverde, Rubio-RamÌrez, and Santos (Eco...
AbstractSequential statistical models such as dynamic Bayesian networks and hidden Markov models mor...
This paper provides a general framework for the quantitative analysis of stochastic dynamic models. ...
© 2017 IEEE. We report the results of a series of numerical studies examining the convergence rate f...
In this article, we consider approximate Bayesian parameter inference for observation-driven time se...
In this article, we consider approximate Bayesian parameter inference for observation-driven time se...
We consider the inference problem for parameters in stochastic differential equation models from dis...
Penalized likelihood method is among the most effective tools for nonparametric multivariate functio...
In the following article we consider approximate Bayesian computation (ABC) for certain classes of t...
This paper presents a framework to undertake likelihood-based inference in nonlinear dynamic equilib...
This paper provides a general framework for the simulation of stochastic dynamic models. Our analysi...
In the following article we consider approximate Bayesian parameter inference for observation driven...
Approximate Bayesian Computation is a family of Monte Carlo methods used for likelihood-free Bayesia...
This paper studies the econometrics of computed dynamic models. Since these models generally lack a ...
This paper studies the econometrics of computed dynamic models. Since these models generally lack a ...
We show by counterexample that Proposition 2 in Fernandez-Villaverde, Rubio-RamÌrez, and Santos (Eco...
AbstractSequential statistical models such as dynamic Bayesian networks and hidden Markov models mor...
This paper provides a general framework for the quantitative analysis of stochastic dynamic models. ...
© 2017 IEEE. We report the results of a series of numerical studies examining the convergence rate f...
In this article, we consider approximate Bayesian parameter inference for observation-driven time se...
In this article, we consider approximate Bayesian parameter inference for observation-driven time se...
We consider the inference problem for parameters in stochastic differential equation models from dis...
Penalized likelihood method is among the most effective tools for nonparametric multivariate functio...
In the following article we consider approximate Bayesian computation (ABC) for certain classes of t...
This paper presents a framework to undertake likelihood-based inference in nonlinear dynamic equilib...
This paper provides a general framework for the simulation of stochastic dynamic models. Our analysi...
In the following article we consider approximate Bayesian parameter inference for observation driven...
Approximate Bayesian Computation is a family of Monte Carlo methods used for likelihood-free Bayesia...