Out-of-sample forecasting tests of DSGE models against time-series benchmarks such as an unrestricted VAR are increasingly used to check (a) the specification and (b) the forecasting capacity of these models. We carry out a Monte Carlo experiment on a widely-used DSGE model to investigate the power of these tests. We find that in specification testing they have weak power relative to an in-sample indirect inference test; this implies that a DSGE model may be badly mis-specified and still improve forecasts from an unrestricted VAR. In testing forecasting capacity they also have quite weak power, particularly on the lefthand tail. By contrast a model that passes an indirect inference test of specification will almost definitely also improve o...
This paper proposes new methodologies for evaluating out-of-sample forecasting performance that are...
With Monte Carlo experiments on models in widespread use we examine the performance of indirect infe...
We explore the benefits of forecast combinations based on forecast-encompassing tests compared to si...
Out-of-sample forecasting tests of DSGE models against time-series benchmarks such as an unrestricte...
Recently, it has been suggested that macroeconomic forecasts from esti-mated DSGE models tend to be ...
We review recent findings in the application of indirect inference to DSGE models. We show that rese...
Using Monte Carlo experiments, we examine the performance of Indirect Inference tests of DSGE models...
Recently, it has been suggested that macroeconomic forecasts from estimated dynamic stochastic gener...
We propose a way of testing a subset of equations of a DSGE model. The test draws on statistical inf...
Using Monte Carlo experiments, we examine the performance of indirect inference tests of DSGE models...
The primary objective of this paper is to revisit DSGE models with a view to bringing out their key ...
DSGE models are a prominent tool for forecasting at central banks and the competitive forecasting pe...
New-generation DSGE models are sometimes misspecified in dimensions that matter for their forecastin...
In this paper we study estimation of DSGE models. More specifically, in the indirect inference frame...
This paper proposes new methodologies for evaluating out-of-sample forecasting performance that are ...
This paper proposes new methodologies for evaluating out-of-sample forecasting performance that are...
With Monte Carlo experiments on models in widespread use we examine the performance of indirect infe...
We explore the benefits of forecast combinations based on forecast-encompassing tests compared to si...
Out-of-sample forecasting tests of DSGE models against time-series benchmarks such as an unrestricte...
Recently, it has been suggested that macroeconomic forecasts from esti-mated DSGE models tend to be ...
We review recent findings in the application of indirect inference to DSGE models. We show that rese...
Using Monte Carlo experiments, we examine the performance of Indirect Inference tests of DSGE models...
Recently, it has been suggested that macroeconomic forecasts from estimated dynamic stochastic gener...
We propose a way of testing a subset of equations of a DSGE model. The test draws on statistical inf...
Using Monte Carlo experiments, we examine the performance of indirect inference tests of DSGE models...
The primary objective of this paper is to revisit DSGE models with a view to bringing out their key ...
DSGE models are a prominent tool for forecasting at central banks and the competitive forecasting pe...
New-generation DSGE models are sometimes misspecified in dimensions that matter for their forecastin...
In this paper we study estimation of DSGE models. More specifically, in the indirect inference frame...
This paper proposes new methodologies for evaluating out-of-sample forecasting performance that are ...
This paper proposes new methodologies for evaluating out-of-sample forecasting performance that are...
With Monte Carlo experiments on models in widespread use we examine the performance of indirect infe...
We explore the benefits of forecast combinations based on forecast-encompassing tests compared to si...