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Invariant Ancestry Search

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arxiv 2202.00913 v2 pith:7LCJWT4Q submitted 2022-02-02 stat.ME cs.LG

Invariant Ancestry Search

classification stat.ME cs.LG
keywords invarianceinvariantancestrycausaldataenvironmentsonlyprediction
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Recently, methods have been proposed that exploit the invariance of prediction models with respect to changing environments to infer subsets of the causal parents of a response variable. If the environments influence only few of the underlying mechanisms, the subset identified by invariant causal prediction (ICP), for example, may be small, or even empty. We introduce the concept of minimal invariance and propose invariant ancestry search (IAS). In its population version, IAS outputs a set which contains only ancestors of the response and is a superset of the output of ICP. When applied to data, corresponding guarantees hold asymptotically if the underlying test for invariance has asymptotic level and power. We develop scalable algorithms and perform experiments on simulated and real data.

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