Disentangling Causal Mechanisms in Conjoint Experiments Using Mediation
Abstract
Conjoint experiments provide an attractive way to assess the role of multiple attributes simultaneously on decision-making.
However, the randomization of multiple attributes prevents understanding the causal mechanisms that, critically, depend on the relationship between attributes -- e.g., how one attribute affects the respondent's belief as to another attribute.
This is because conjoint experiments recover controlled effects whereas a substantively important estimand may be the total or indirect effect of one attribute.
Unfortunately, existing experimental designs for conjoint experiments cannot estimate these effects.
We provide an alternative framework that requires one additional, simple experiment to learn the relationship between attributes among respondents alongside the standard assumptions for causal mediation.
Estimation of the relevant effects can be done in a doubly robust fashion using machine learning methods.
We illustrate this by conducting a pre-registered experiment on candidate choice and disentangle the effect of different attributes by understanding their mediation through the candidate's party.
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