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Choosing the number of moments in conditional moment restriction models
Author(s)
Imbens, Guido W.; Donald, Stephen G.; Newey, Whitney K.
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Properties of GMM estimators are sensitive to the choice of instruments. Using
many instruments leads to high asymptotic asymptotic efficiency but can cause
high bias and/or variance in small samples. In this paper we develop and implement
asymptotic mean square error (MSE) based criteria for instrumental variables
to use for estimation of conditional moment restriction models. The models we
consider include various nonlinear simultaneous equations models with unknown
heteroskedasticity. We develop moment selection criteria for the familiar two-step
optimal GMM estimator (GMM), a bias corrected version, and generalized empirical
likelihood estimators (GEL), that include the continuous updating estimator
(CUE) as a special case. We also find that the CUE has lower higher-order variance
than the bias-corrected GMM estimator, and that the higher-order efficiency
of other GEL estimators depends on conditional kurtosis of the moments.
Department
Massachusetts Institute of Technology. Department of EconomicsJournal
Forthcoming in Econometrica
Citation
Newey, Whitney K., Guido Imbens and Stephen G. Donald. "Choosing the number of moments in conditional moment restriction models." Forthcoming in Econometrica.
Version: Author's final manuscript
Keywords
mean squared error, generalized empirical likelihood, generalized method of moments, conditional moment restrictions