This paper proposes a generalized maximum entropy (GME) approach to estimate nonlinear dynamic stochastic decision models. For these models, the state variables are latent and a solution process is required to obtain the state space representation. To our knowledge, this method has not been used to estimate dynamic stochastic general equilibrium (DSGE) or DSGE-like models. Based on the Monte Carlo experiments with simulated data, we show that the GME approach yields precise estimation for the unknown structural parameters and the structural shocks. In particular, the preference parameter which captures the risk preference and the intertemporal preference is also relatively precisely estimated. Compare to the more widely used filtering metho...
We introduce a maximum entropy approach to parameter estimation for computable general equilibrium (...
This paper introduces the general multilevel models and discusses the generalized maximum entropy (G...
In this paper, the benefits of statistical inference of score-driven state-spacemodels are incorpora...
In this article, we describe the gmentropylogit command, which implements the generalized maximum en...
This paper employs the one-sector Real Business Cycle model as a testing ground for four different p...
We introduce a maximum entropy approach to parameter estimation for computable general equilibrium (...
This paper employs the one-sector Real Business Cycle model as a testing ground for four different p...
This paper discusses a tractable approach for computing the likelihood function of non-linear Dynami...
Given the objective of estimating the unknown parameters of a possibly nonlinear dynamic model using...
The authors introduce a maximum entropy approach to parameter estimation for computable general equi...
doi:10.1080/07474930701220071 This paper reviews Bayesian methods that have been developed in recent...
This paper estimates new Keynesian, dynamic stochastic general equilibrium models in a liquidity tra...
Advisors: Duchwan Ryu.Committee members: Nader Ebrahimi; Alan Polansky.Includes bibliographical refe...
In this paper, I review the literature on the formulation and estimation of dynamic stochastic gener...
This paper develops a method that uses a likelihood approach to directly compare two or more non-nes...
We introduce a maximum entropy approach to parameter estimation for computable general equilibrium (...
This paper introduces the general multilevel models and discusses the generalized maximum entropy (G...
In this paper, the benefits of statistical inference of score-driven state-spacemodels are incorpora...
In this article, we describe the gmentropylogit command, which implements the generalized maximum en...
This paper employs the one-sector Real Business Cycle model as a testing ground for four different p...
We introduce a maximum entropy approach to parameter estimation for computable general equilibrium (...
This paper employs the one-sector Real Business Cycle model as a testing ground for four different p...
This paper discusses a tractable approach for computing the likelihood function of non-linear Dynami...
Given the objective of estimating the unknown parameters of a possibly nonlinear dynamic model using...
The authors introduce a maximum entropy approach to parameter estimation for computable general equi...
doi:10.1080/07474930701220071 This paper reviews Bayesian methods that have been developed in recent...
This paper estimates new Keynesian, dynamic stochastic general equilibrium models in a liquidity tra...
Advisors: Duchwan Ryu.Committee members: Nader Ebrahimi; Alan Polansky.Includes bibliographical refe...
In this paper, I review the literature on the formulation and estimation of dynamic stochastic gener...
This paper develops a method that uses a likelihood approach to directly compare two or more non-nes...
We introduce a maximum entropy approach to parameter estimation for computable general equilibrium (...
This paper introduces the general multilevel models and discusses the generalized maximum entropy (G...
In this paper, the benefits of statistical inference of score-driven state-spacemodels are incorpora...