Causal Inference: A Missing Data Perspective

12/17/2017
by   Peng Ding, et al.
0

Inferring causal effects of treatments is a central goal in many disciplines. The potential outcomes framework is a main statistical approach to causal inference, in which a causal effect is defined as a comparison of the potential outcomes of the same units under different treatment conditions. Because for each unit at most one of the potential outcomes is observed and the rest are missing, causal inference is inherently a missing data problem. Indeed, there is a close analogy in the terminology and the inferential framework between causal inference and missing data. Despite the intrinsic connection between the two subjects, statistical analyses of causal inference and missing data also have marked differences in aims, settings and methods. This article provides a systematic review of causal inference from the missing data perspective. Focusing on ignorable treatment assignment mechanisms, we discuss a wide range of causal inference methods that have analogues in missing data analysis, such as imputation, inverse probability weighting and doubly-robust methods. Under each of the three modes of inference--Frequentist, Bayesian, and Fisherian randomization--we present the general structure of inference for both finite-sample and super-population estimands, and illustrate via specific examples. We identify open questions to motivate more research to bridge the two fields.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
10/11/2022

Causal and counterfactual views of missing data models

It is often said that the fundamental problem of causal inference is a m...
research
08/07/2020

Bayesian causal inference for count potential outcomes

The literature for count modeling provides useful tools to conduct causa...
research
05/22/2020

Navigated Weighting to Improve Inverse Probability Weighting for Missing Data Problems and Causal Inference

The inverse probability weighting (IPW) is broadly utilized to address m...
research
07/09/2021

Hypothetical estimands in clinical trials: a unification of causal inference and missing data methods

The ICH E9 addendum introduces the term intercurrent event to refer to e...
research
02/25/2020

MissDeepCausal: Causal Inference from Incomplete Data Using Deep Latent Variable Models

Inferring causal effects of a treatment, intervention or policy from obs...
research
07/25/2022

Causal predictive inference and target trial emulation

Causal inference from observational data can be viewed as a missing data...
research
08/10/2020

Using Multiple Imputation to Classify Potential Outcomes Subgroups

With medical tests becoming increasingly available, concerns about over-...

Please sign up or login with your details

Forgot password? Click here to reset