Inverse Probability Tilting for Moment Condition Models with Missing Data

42 Pages Posted: 12 May 2008 Last revised: 15 Sep 2022

See all articles by Daniel Egel

Daniel Egel

University of California, Berkeley - Department of Economics

Bryan S. Graham

University of California, Berkeley - Department of Economics; National Bureau of Economic Research (NBER)

Cristine Campos de Xavier Pinto

University of California, Berkeley - Department of Economics

Date Written: May 2008

Abstract

We propose a new inverse probability weighting (IPW) estimator for moment condition models with missing data. Our estimator is easy to implement and compares favorably with existing IPW estimators, including augmented inverse probability weighting (AIPW) estimators, in terms of efficiency, robustness, and higher order bias. We illustrate our method with a study of the relationship between early Black-White differences in cognitive achievement and subsequent differences in adult earnings. In our dataset the early childhood achievement measure, the main regressor of interest, is missing for many units.

Suggested Citation

Egel, Daniel and Graham, Bryan S. and Campos de Xavier Pinto, Cristine, Inverse Probability Tilting for Moment Condition Models with Missing Data (May 2008). NBER Working Paper No. w13981, Available at SSRN: https://ssrn.com/abstract=1131634

Daniel Egel

University of California, Berkeley - Department of Economics ( email )

Berkeley, CA 94720
United States

Bryan S. Graham (Contact Author)

University of California, Berkeley - Department of Economics ( email )

549 Evans Hall #3880
Berkeley, CA 94720-3880
United States

National Bureau of Economic Research (NBER)

1050 Massachusetts Avenue
Cambridge, MA 02138
United States

Cristine Campos de Xavier Pinto

University of California, Berkeley - Department of Economics

549 Evans Hall #3880
Berkeley, CA 94720-3880
United States

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