Econometrica: Mar, 2022, Volume 90, Issue 2
Optimal Decision Rules for Weak GMM
https://doi.org/10.3982/ECTA18678
p. 715-748
Isaiah Andrews, Anna Mikusheva
This paper studies optimal decision rules, including estimators and tests, for weakly identified GMM models. We derive the limit experiment for weakly identified GMM, and propose a theoreticallyâmotivated class of priors which give rise to quasiâBayes decision rules as a limiting case. Together with results in the previous literature, this establishes desirable properties for the quasiâBayes approach regardless of model identification status, and we recommend quasiâBayes for settings where identification is a concern. We further propose weighted average powerâoptimal identificationârobust frequentist tests and confidence sets, and prove a Bernsteinâvon Misesâtype result for the quasiâBayes posterior under weak identification.
Supplemental Material
Supplement to "Optimal Decision Rules for Weak GMM"
Andrews, Isaiah, and Anna Mikusheva
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