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Analyzing Causal Mechanisms in Survey Experiments

Published online by Cambridge University Press:  03 August 2018

Avidit Acharya
Affiliation:
Assistant Professor, Department of Political Science, Stanford University, Stanford, CA 94305, USA. Email: avidit@stanford.edu, URL: http://www.stanford.edu/∼avidit
Matthew Blackwell*
Affiliation:
Assistant Professor, Department of Government, Harvard University, Cambridge, MA 02138, USA. Email: mblackwell@gov.harvard.edu, URL: http://www.mattblackwell.org
Maya Sen
Affiliation:
Associate Professor, Harvard Kennedy School, Harvard University, Cambridge, MA 02138, USA. Email: maya_sen@hks.harvard.edu, URL: http://scholar.harvard.edu/msen
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Abstract

Researchers investigating causal mechanisms in survey experiments often rely on nonrandomized quantities to isolate the indirect effect of treatment through these variables. Such an approach, however, requires a “selection-on-observables” assumption, which undermines the advantages of a randomized experiment. In this paper, we show what can be learned about casual mechanisms through experimental design alone. We propose a factorial design that provides or withholds information on mediating variables and allows for the identification of the overall average treatment effect and the controlled direct effect of treatment fixing a potential mediator. While this design cannot identify indirect effects on its own, it avoids making the selection-on-observable assumption of the standard mediation approach while providing evidence for a broader understanding of causal mechanisms that encompasses both indirect effects and interactions. We illustrate these approaches via two examples: one on evaluations of US Supreme Court nominees and the other on perceptions of the democratic peace.

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Articles
Copyright
Copyright © The Author(s) 2018. Published by Cambridge University Press on behalf of the Society for Political Methodology. 
Figure 0

Table 1. Representation of the different effects described in the proposed design. The interior cells show what the average outcome of the experimental arm identifies. The margins show what effects correspond to the difference of the quantities in the rows and columns. The eliminated effect, $\unicode[STIX]{x1D6E5}$, is the difference between these differences. For clarity, we only include one manipulated-mediator arm.

Figure 1

Figure 1. Average marginal effects of nominee race on support for the nominee (left panel) and eliminated effects for nominee partisanship as a mediating variable (middle and right panels). The eliminated effect in the middle panel has the partisanship set to “Republican” and the eliminated effect in the right panel has the partisanship set to “Democrat.” All effects are relative to the baseline of a white nominee. Thick and thin lines are 90% and 95% confidence intervals, respectively.

Figure 2

Figure 2. Results from the replication of Tomz and Weeks (2013). Data from a Mechanical Turk survey experiment ($N=1247$). Bootstrap 95% (thin line) and 90% (thick line) confidence intervals are based on 5,000 bootstrap replications.

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