作者
Razieh Nabi, Rohit Bhattacharya, Ilya Shpitser
发表日期
2020/11/21
研讨会论文
International conference on machine learning
页码范围
7153-7163
出版商
PMLR
简介
Missing data has the potential to affect analyses conducted in all fields of scientific study including healthcare, economics, and the social sciences. Several approaches to unbiased inference in the presence of non-ignorable missingness rely on the specification of the target distribution and its missingness process as a probability distribution that factorizes with respect to a directed acyclic graph. In this paper, we address the longstanding question of the characterization of models that are identifiable within this class of missing data distributions. We provide the first completeness result in this field of study–necessary and sufficient graphical conditions under which, the full data distribution can be recovered from the observed data distribution. We then simultaneously address issues that may arise due to the presence of both missing data and unmeasured confounding, by extending these graphical conditions and proofs of completeness, to settings where some variables are not just missing, but completely unobserved.
引用总数
2020202120222023202451110168
学术搜索中的文章
R Nabi, R Bhattacharya, I Shpitser - International conference on machine learning, 2020