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4 - Models of Causal Exposure and Identification Criteria for Conditioning Estimators

Published online by Cambridge University Press:  05 December 2014

Stephen L. Morgan
Affiliation:
The Johns Hopkins University
Christopher Winship
Affiliation:
Harvard University, Massachusetts
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Summary

In this chapter, we present the basic conditioning strategy for the estimation of causal effects. We first provide an account of the two basic implementations of conditioning – balancing the determinants of the cause of interest and adjusting for other causes of the outcome – using the language of “back-door paths.” After explaining the unique role that collider variables play in systems of causal relationships, we present what has become known as the back-door criterion for sufficient conditioning to identify a causal effect. To bring the back-door criterion into alignment with related guidance based on the potential outcome model, we then present models of causal exposure, introducing the treatment assignment and treatment selection literature from statistics and econometrics. We conclude with a discussion of the identification and estimation of conditional average causal effects by conditioning.

Conditioning and Directed Graphs

In Section 1.5, we introduced the three most common approaches for the estimation of causal effects, using language from the directed graph literature: (1) conditioning on variables that block all back-door paths from the causal variable to the outcome variable, (2) using exogenous variation in an appropriate instrumental variable to isolate covariation in the causal variable and the outcome variable, and (3) establishing the exhaustive and isolated mechanism that intercepts the effect of the causal variable on the outcome variable and then calculating the causal effect as it propagates through the mechanism.

Type
Chapter
Information
Counterfactuals and Causal Inference
Methods and Principles for Social Research
, pp. 105 - 139
Publisher: Cambridge University Press
Print publication year: 2014

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