This paper builds upon the composite likelihood concept of Lindsay (1988) to develop a framework for parameter identi\u85cation, estimation, inference and forecasting in DSGE models allowing for stochastic singularity. The framework consists of the following four components. First, it provides a necessary and su ¢ cient condition for parameter identi\u85cation, where the identifying information is provided by the \u85rst and second order properties of the nonsingular submodels. Second, it provides an MCMC based procedure for parameter estimation. Third, it delivers con\u85dence sets for the structural parameters and the impulse responses that allow for model misspeci\u85cation. Fourth, it generates forecasts for all the observed endogenous ...
DSGE models are of interest because they offer structural interpretations, but are also increasingly...
DSGE models are currently estimated with a two-step approach: the data is first transformed and then...
The Akaike information criterion has been derived under the assumptions that the model is “true”, or...
This paper builds upon the composite likelihood concept of Lindsay (1988) to develop a framework for...
Replication Data for: "A Composite Likelihood Framework for Analyzing Singular DSGE Models
We propose two methods to choose the variables to be used in the estimation of the structural parame...
Abstract This paper demonstrates a method of estimating and testing stochastically singular state-sp...
This paper presents a simple and fast maximum likelihood estimation method for non-linear DSGE model...
This paper discusses a tractable approach for computing the likelihood function of non-linear Dynami...
A composite likelihood consists of a combination of valid likelihood objects, usually related to sma...
DSGE models are currently estimated with a two-step approach: the data is first transformed and then...
This paper employs the one-sector Real Business Cycle model as a testing ground for four different p...
We describe methods for assessing estimated dynamic stochastic general equilibrium (DSGE) models. On...
Our research agenda has focused on the estimation of dynamic stochastic general equilibrium (DSGE) m...
A DSGE model is identifiable when perturbing the parameters characterizing the forward looking optim...
DSGE models are of interest because they offer structural interpretations, but are also increasingly...
DSGE models are currently estimated with a two-step approach: the data is first transformed and then...
The Akaike information criterion has been derived under the assumptions that the model is “true”, or...
This paper builds upon the composite likelihood concept of Lindsay (1988) to develop a framework for...
Replication Data for: "A Composite Likelihood Framework for Analyzing Singular DSGE Models
We propose two methods to choose the variables to be used in the estimation of the structural parame...
Abstract This paper demonstrates a method of estimating and testing stochastically singular state-sp...
This paper presents a simple and fast maximum likelihood estimation method for non-linear DSGE model...
This paper discusses a tractable approach for computing the likelihood function of non-linear Dynami...
A composite likelihood consists of a combination of valid likelihood objects, usually related to sma...
DSGE models are currently estimated with a two-step approach: the data is first transformed and then...
This paper employs the one-sector Real Business Cycle model as a testing ground for four different p...
We describe methods for assessing estimated dynamic stochastic general equilibrium (DSGE) models. On...
Our research agenda has focused on the estimation of dynamic stochastic general equilibrium (DSGE) m...
A DSGE model is identifiable when perturbing the parameters characterizing the forward looking optim...
DSGE models are of interest because they offer structural interpretations, but are also increasingly...
DSGE models are currently estimated with a two-step approach: the data is first transformed and then...
The Akaike information criterion has been derived under the assumptions that the model is “true”, or...