Pattern graphs: a graphical approach to nonmonotone missing data
Methodology
2020-12-04 v2 Statistics Theory
Statistics Theory
Abstract
We introduce the concept of pattern graphs--directed acyclic graphs representing how response patterns are associated. A pattern graph represents an identifying restriction that is nonparametrically identified/saturated and is often a missing not at random restriction. We introduce a selection model and a pattern mixture model formulations using the pattern graphs and show that they are equivalent. A pattern graph leads to an inverse probability weighting estimator as well as an imputation-based estimator. We also study the semi-parametric efficiency theory and derive a multiply-robust estimator using pattern graphs.
Cite
@article{arxiv.2004.00744,
title = {Pattern graphs: a graphical approach to nonmonotone missing data},
author = {Yen-Chi Chen},
journal= {arXiv preprint arXiv:2004.00744},
year = {2020}
}
Comments
Main paper: 25 pages. We added semi-parametric theory of pattern graphs in Section 3.3