Characterizing and Learning Equivalence Classes of Causal DAGs under Interventions

ICML 2018 Karren YangAbigail KatcoffCaroline Uhler

We consider the problem of learning causal DAGs in the setting where both observational and interventional data is available. This setting is common in biology, where gene regulatory networks can be intervened on using chemical reagents or gene deletions... (read more)

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