Discrete choice models for Nonmonotone nonignorable missing data: Identification and inference

20Citations
Citations of this article
17Readers
Mendeley users who have this article in their library.
Get full text

Abstract

Nonmonotone missing data arise routinely in empirical studies of the social and health sciences and, when ignored, can induce selection bias and loss of efficiency. It is common to account for nonresponse under a missing-at-random assumption which, although convenient, is rarely appropriate when nonresponse is nonmonotone. Likelihood and Bayesian missing data methodologies often require specification of a parametric model for the full data law, thus a priori ruling out any prospect for semiparametric inference. In this paper, we propose an all-purpose approach which delivers semiparametric inferences when missing data are nonmonotone and not at random. The approach is based on a discrete choice model (DCM) as a means to generate a large class of nonmonotone nonresponse mechanisms that are nonignorable. Sufficient conditions for nonparametric identification are given, and a general framework for fully parametric and semiparametric inference under an arbitrary DCM is proposed. Special consideration is given to the case of logit discrete choice nonresponse model (LDCM) for which we describe generalizations of inverse-probability weighting, pattern-mixture estimation, doubly robust estimation, and multiply robust estimation.

Cite

CITATION STYLE

APA

Tchetgen, E. J., Wang, L., & Sun, B. L. (2018). Discrete choice models for Nonmonotone nonignorable missing data: Identification and inference. Statistica Sinica, 28(4), 2069–2088. https://doi.org/10.5705/ss.202016.0325

Register to see more suggestions

Mendeley helps you to discover research relevant for your work.

Already have an account?

Save time finding and organizing research with Mendeley

Sign up for free