Causal Effect Identification in Cluster DAGs
Tara V. Anand, Ad\`ele H. Ribeiro, Jin Tian, Elias Bareinboim

TL;DR
This paper introduces cluster DAGs (C-DAGs), a new graphical model that allows for partial causal knowledge representation, enabling valid causal inference in complex, high-dimensional domains with limited prior information.
Contribution
The paper develops the theoretical foundations and inference machinery for C-DAGs, including soundness and completeness proofs for d-separation, do-calculus, and causal effect identification.
Findings
C-DAGs enable valid probabilistic, interventional, and counterfactual inference.
The ID algorithm is sound and complete for causal effect identification using C-DAGs.
C-DAGs generalize causal modeling to settings with partial causal knowledge.
Abstract
Reasoning about the effect of interventions and counterfactuals is a fundamental task found throughout the data sciences. A collection of principles, algorithms, and tools has been developed for performing such tasks in the last decades (Pearl, 2000). One of the pervasive requirements found throughout this literature is the articulation of assumptions, which commonly appear in the form of causal diagrams. Despite the power of this approach, there are significant settings where the knowledge necessary to specify a causal diagram over all variables is not available, particularly in complex, high-dimensional domains. In this paper, we introduce a new graphical modeling tool called cluster DAGs (for short, C-DAGs) that allows for the partial specification of relationships among variables based on limited prior knowledge, alleviating the stringent requirement of specifying a full causal…
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Taxonomy
TopicsBayesian Modeling and Causal Inference · Explainable Artificial Intelligence (XAI) · Logic, Reasoning, and Knowledge
MethodsCounterfactuals Explanations
