This paper discusses a tractable approach for computing the likelihood function of non-linear Dynamic Stochastic General Equilibrium (DSGE) models that are solved using second- and third order accurate approximations. By contrast to particle filters, no stochastic simulations are needed for the method here. The method here is, hence, much faster and it is thus suitable for the estimation of medium-scale models. The method assumes that the number of exogenous innovations equals the number of observables. Given an assumed vector of initial states, the exogenous innovations can thus recursively be inferred from the observables. This easily allows to compute the likelihood function. Initial states and model parameters are estimated by maximizin...
This paper develops a novel approach for estimating latent state variables of Dynamic Stochastic Gen...
AbstractClosed-form expressions for unconditional moments, cumulants and polyspectra of order higher...
doi:10.1080/07474930701220071 This paper reviews Bayesian methods that have been developed in recent...
This paper discusses a tractable approach for computing the likelihood function of non-linear Dynami...
This paper presents a simple and fast maximum likelihood estimation method for non-linear DSGE model...
This paper develops a novel approach for estimating latent state variables of Dynamic Stochastic Gen...
This paper studies the pruned state-space system for higher-order approximations to the solutions of...
This article describes a new approximation method for dynamic stochastic general equilibrium (DSGE) ...
This paper presents a framework to undertake likelihood-based inference in nonlinear dynamic equilib...
This paper employs the one-sector Real Business Cycle model as a testing ground for four different p...
Abstract This paper develops a novel approach for estimating latent state variables of Dynamic Stoch...
In this paper, I review the literature on the formulation and estimation of dynamic stochastic gener...
Abstract: This paper presents a framework to undertake likelihood-based inference in nonlinear dynam...
This paper employs the one-sector Real Business Cycle model as a testing ground for four different p...
Our research agenda has focused on the estimation of dynamic stochastic general equilibrium (DSGE) m...
This paper develops a novel approach for estimating latent state variables of Dynamic Stochastic Gen...
AbstractClosed-form expressions for unconditional moments, cumulants and polyspectra of order higher...
doi:10.1080/07474930701220071 This paper reviews Bayesian methods that have been developed in recent...
This paper discusses a tractable approach for computing the likelihood function of non-linear Dynami...
This paper presents a simple and fast maximum likelihood estimation method for non-linear DSGE model...
This paper develops a novel approach for estimating latent state variables of Dynamic Stochastic Gen...
This paper studies the pruned state-space system for higher-order approximations to the solutions of...
This article describes a new approximation method for dynamic stochastic general equilibrium (DSGE) ...
This paper presents a framework to undertake likelihood-based inference in nonlinear dynamic equilib...
This paper employs the one-sector Real Business Cycle model as a testing ground for four different p...
Abstract This paper develops a novel approach for estimating latent state variables of Dynamic Stoch...
In this paper, I review the literature on the formulation and estimation of dynamic stochastic gener...
Abstract: This paper presents a framework to undertake likelihood-based inference in nonlinear dynam...
This paper employs the one-sector Real Business Cycle model as a testing ground for four different p...
Our research agenda has focused on the estimation of dynamic stochastic general equilibrium (DSGE) m...
This paper develops a novel approach for estimating latent state variables of Dynamic Stochastic Gen...
AbstractClosed-form expressions for unconditional moments, cumulants and polyspectra of order higher...
doi:10.1080/07474930701220071 This paper reviews Bayesian methods that have been developed in recent...