A Geometric Approach to Weakly Identified Econometric Models
Author(s)
Andrews, Isaiah; Mikusheva, Anna
DownloadAnnaMikusheva12-15.pdf (889.6Kb)
Terms of use
Metadata
Show full item recordAbstract
Many nonlinear Econometric models show evidence of weak identification, including many Dynamic Stochastic General Equilibrium models, New Keynesian Phillips curve models, and models with forward-looking expectations. In this paper we consider minimum distance statistics and show that in a broad class of models the problem of testing under weak identification is closely related to the problem of testing a ``curved null'' in a finite-sample Gaussian model. Using the curvature of the model, we develop new finite-sample bounds on the distribution of Anderson-Rubin-type statistics, which we show can be used to detect weak identification and to construct tests robust to weak identification. We apply the new method to a small-scale DSGE model and show that it provides a significant improvement over existing methods.
Date issued
2012-05-29Publisher
Cambridge, MA: Department of Economics, Massachusetts Institute of Technology
Series/Report no.
Working paper, Massachusetts Institute of Technology, Dept. of Economics;12-15
Keywords
weak identification, statistical differential geometry
Collections
The following license files are associated with this item: