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Invariant Causal Set Covering Machines

Résumé

Rule-based models, such as decision trees, appeal to practitioners due to their interpretable nature. However, the learning algorithms that produce such models are often vulnerable to spurious associations and thus, they are not guaranteed to extract causally-relevant insights. In this work, we build on ideas from the invariant causal prediction literature to propose Invariant Causal Set Covering Machines, an extension of the classical Set Covering Machine algorithm for conjunctions/disjunctions of binary-valued rules that provably avoids spurious associations. We demonstrate both theoretically and empirically that our method can identify the causal parents of a variable of interest in polynomial time.

Publication
Workshop on Spurious Correlations, Invariance, and Stability (ICML)
Alexandre Drouin
Alexandre Drouin
Head of AI Frontier Research​

Head of AI Frontier Research​ at AI Frontier Research located at Montreal, QC, Canada.