Counterfactual graphical models for longitudinal mediation analysis with unobserved confounding
Counterfactual graphical models for longitudinal mediation analysis with unobserved confounding
Questions concerning mediated causal effects are of great interest in psychology, cognitive science, medicine, social science, public health, and many other disciplines. For instance, about 60% of recent papers published in leading journals in social psychology contain at least one mediation test (Rucker, Preacher, Tormala, & Petty, 2011). Standard parametric approaches to mediation analysis employ regression models, and either the "difference method" (Judd & Kenny, 1981), more common in epidemiology, or the "product method" (Baron & Kenny, 1986), more common in the social sciences. In this paper we first discuss a known, but perhaps often unappreciated fact: that these parametric approaches are a special case of a general counterfactual framework for reasoning about causality first described by Neyman (1923), and Rubin (1974), and linked to causal graphical models by J. Robins (1986), and Pearl (2000). We then show a number of advantages of this framework. First, it makes the strong assumptions underlying mediation analysis explicit. Second, it avoids a number of problems present in the product and difference methods, such as biased estimates of effects in certain cases. Finally, we show the generality of this framework by proving a novel result which allows mediation analysis to be applied to longitudinal settings with unobserved confounders.
1011-1035
Shpitser, Ilya
4d295b9b-39e8-417f-b38d-fbb5d7df6992
2013
Shpitser, Ilya
4d295b9b-39e8-417f-b38d-fbb5d7df6992
Shpitser, Ilya
(2013)
Counterfactual graphical models for longitudinal mediation analysis with unobserved confounding.
Cognitive Science, 37 (6), .
Abstract
Questions concerning mediated causal effects are of great interest in psychology, cognitive science, medicine, social science, public health, and many other disciplines. For instance, about 60% of recent papers published in leading journals in social psychology contain at least one mediation test (Rucker, Preacher, Tormala, & Petty, 2011). Standard parametric approaches to mediation analysis employ regression models, and either the "difference method" (Judd & Kenny, 1981), more common in epidemiology, or the "product method" (Baron & Kenny, 1986), more common in the social sciences. In this paper we first discuss a known, but perhaps often unappreciated fact: that these parametric approaches are a special case of a general counterfactual framework for reasoning about causality first described by Neyman (1923), and Rubin (1974), and linked to causal graphical models by J. Robins (1986), and Pearl (2000). We then show a number of advantages of this framework. First, it makes the strong assumptions underlying mediation analysis explicit. Second, it avoids a number of problems present in the product and difference methods, such as biased estimates of effects in certain cases. Finally, we show the generality of this framework by proving a novel result which allows mediation analysis to be applied to longitudinal settings with unobserved confounders.
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Published date: 2013
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Local EPrints ID: 350592
URI: http://eprints.soton.ac.uk/id/eprint/350592
ISSN: 0364-0213
PURE UUID: 11a70c1b-0e67-496c-a559-7adc3e1da5ba
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Date deposited: 28 Mar 2013 13:05
Last modified: 14 Mar 2024 13:29
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Ilya Shpitser
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