Methods in causal inference. Part 1: causal diagrams and confounding
Joseph Bulbulia
Abstract
Causal inference requires contrasting counterfactual states under specified interventions. Obtaining these contrasts from data depends on explicit assumptions and careful, multi-step workflows. Causal diagrams are crucial for clarifying the identifiability of counterfactual contrasts from data. Here, I explain how to use causal directed acyclic graphs (DAGs) to determine if and how causal effects can be identified from non-experimental observational data, offering practical reporting tips and suggestions to avoid common pitfalls.
Topics & Concepts
Causal inferenceConfoundingCausal modelInferenceCausal structureComputer scienceCausal analysisEconometricsStatisticsArtificial intelligenceMathematicsQuantum mechanicsPhysicsComputational Drug Discovery MethodsPhilosophy and History of Science