Publication | Open Access
Graphical Models for Quasi-experimental Designs
60
Citations
21
References
2015
Year
EngineeringTreatment EffectOptimal Experimental DesignSimulationComputer-aided DesignQuasi-experimentCausal GraphsCausal InferenceInstrumental VariableBiasExperimental EconomicsBiostatisticsModeling And SimulationPublic HealthStatisticsCausal ModelGraphical ModelsDesignCausal ReasoningExperiment DesignStatistical InferenceRd Design
Randomized controlled trials (RCTs) and quasi-experimental designs like regression discontinuity (RD) designs, instrumental variable (IV) designs, and matching and propensity score (PS) designs are frequently used for inferring causal effects. It is well known that the features of these designs facilitate the identification of a causal estimand and, thus, warrant a causal interpretation of the estimated effect. In this article, we discuss and compare the identifying assumptions of quasi-experiments using causal graphs. The increasing complexity of the causal graphs as one switches from an RCT to RD, IV, or PS designs reveals that the assumptions become stronger as the researcher's control over treatment selection diminishes. We introduce limiting graphs for the RD design and conditional graphs for the latent subgroups of com-pliers, always takers, and never takers of the IV design, and argue that the PS is a collider that offsets confounding bias via collider bias.
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