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A GMM Approach for Dealing with Missing Data on Regressors

Jason Abrevaya; Stephen G. Donald

University of Texas

The Review of Economics and Statistics 2017 open access

Missing data are a common challenge facing empirical researchers. This paper presents a general GMM framework and estimator for dealing with missing values of an explanatory variable in linear regression analysis. The GMM estimator is efficient under assumptions needed for consistency of linear-imputation methods. The estimator, which also allows for a specification test of the missingness assumptions, is compared to existing linear imputation, complete data, and dummy variable methods commonly used in empirical research. The dummy variable method is generally inconsistent even when data are missing completely at random, and the dummy variable method, when consistent, can be less efficient than the complete data method.

DOI
10.1162/rest_a_00645
Volume
99 (4)
Pages
657-662
Language
en
Export
BibTeX
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