Towards Robust Causal Effect Identification Beyond Markov Equivalence

Jun 9, 2025ยท
Kai Zhi Teh
Kai Zhi Teh
,
Kayvan Sadeghi
,
Terry Soo
ยท 0 min read
Abstract
Causal effect identification typically requires a fully specified causal graph, which can be difficult to obtain in practice. We provide a sufficient criterion for identifying causal effects from a candidate set of Markov equivalence classes with added background knowledge, which represents cases where determining the causal graph up to a single Markov equivalence class is challenging. Such cases can happen, for example, when the untestable assumptions (e.g. faithfulness) that underlie causal discovery algorithms do not hold.
Type
Publication
ICML 2025 Workshop - Scaling Up Intervention Models