Clarifying causal mediation analysis for the applied researcher: Effect identification via three assumptions and five potential outcomes

11/18/2020
by   Trang Quynh Nguyen, et al.
0

Causal mediation analysis is complicated with multiple effect definitions that require different sets of assumptions for identification. This paper provides a systematic explanation of such assumptions. We define five potential outcome types whose means are involved in various effect definitions. We tackle their mean/distribution's identification, starting with the one that requires the weakest assumptions and gradually building up to the one that requires the strongest assumptions. This presentation shows clearly why an assumption is required for one estimand and not another, and provides a succinct table from which an applied researcher could pick out the assumptions required for identifying the causal effects they target. Using a running example, the paper illustrates the assembling and consideration of identifying assumptions for a range of causal contrasts. For several that are commonly encountered in the literature, this exercise clarifies that identification requires weaker assumptions than those often stated in the literature. This attention to the details also draws attention to the differences in the positivity assumption for different estimands, with practical implications. Clarity on the identifying assumptions of these various estimands will help researchers conduct appropriate mediation analyses and interpret the results with appropriate caution given the plausibility of the assumptions.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
10/20/2020

Average causal effect estimation via instrumental variables: the no simultaneous heterogeneity assumption

Instrumental variables (IVs) can be used to provide evidence as to wheth...
research
04/17/2019

Clarifying causal mediation analysis for the applied researcher: Defining effects based on what we want to learn

The incorporation of causal inference in mediation analysis has led to t...
research
06/21/2020

Regression and Causality

The causal effect of an intervention (treatment/exposure) on an outcome ...
research
01/04/2021

Better Bunching, Nicer Notching

We study the bunching identification strategy for an elasticity paramete...
research
05/04/2022

Choosing Exogeneity Assumptions in Potential Outcome Models

There are many kinds of exogeneity assumptions. How should researchers c...
research
01/18/2021

The Violating Assumptions Series: Simulated demonstrations to illustrate how assumptions can affect statistical estimates

When teaching and discussing statistical assumptions, our focus is often...
research
06/19/2018

Enhancing Identification of Causal Effects by Pruning

Causal models communicate our assumptions about causes and effects in re...

Please sign up or login with your details

Forgot password? Click here to reset