Efficiency Bounds for Missing Data Models with Semiparametric Restrictions

27 Pages Posted: 8 Oct 2008 Last revised: 14 Oct 2022

See all articles by Bryan S. Graham

Bryan S. Graham

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

Date Written: October 2008

Abstract

This paper shows that the semiparametric efficiency bound for a parameter identified by an unconditional moment restriction with data missing at random (MAR) coincides with that of a particular augmented moment condition problem. The augmented system consists of the inverse probability weighted (IPW) original moment restriction and an additional conditional moment restriction which exhausts all other implications of the MAR assumption. The paper also investigates the value of additional semiparametric restrictions on the conditional expectation function (CEF) of the original moment function given always- observed covariates. In the program evaluation context, for example, such restrictions are implied by semiparametric models for the potential outcome CEFs given baseline covariates. The efficiency bound associated with this model is shown to also coincide with that of a particular moment condition problem. Some implications of these results for estimation are briefly discussed.

Suggested Citation

Graham, Bryan S., Efficiency Bounds for Missing Data Models with Semiparametric Restrictions (October 2008). NBER Working Paper No. w14376, Available at SSRN: https://ssrn.com/abstract=1278450

Bryan S. Graham (Contact Author)

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

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Berkeley, CA 94720-3880
United States

National Bureau of Economic Research (NBER)

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