Publications

Detailed Information

Counterfactual Transportability: A Formal Approach

DC Field Value Language
dc.contributor.authorCorrea, Juan D.-
dc.contributor.authorLee, Sanghack-
dc.contributor.authorBareinboim, Elias-
dc.date.accessioned2024-05-13T05:11:06Z-
dc.date.available2024-05-13T05:11:06Z-
dc.date.created2023-03-22-
dc.date.issued2022-07-
dc.identifier.citationProceedings of Machine Learning Research (PMLR), Vol.162, pp.4370-4390-
dc.identifier.issn1938-7228-
dc.identifier.urihttps://hdl.handle.net/10371/201551-
dc.description.abstractGeneralizing causal knowledge across environments is a common challenge shared across many of the data-driven disciplines, including AI and ML. Experiments are usually performed in one environment (e.g., in a lab, on Earth, in a training ground), almost invariably, with the intent of being used elsewhere (e.g., outside the lab, on Mars, in the real world), in an environment that is related but somewhat different than the original one, where certain conditions and mechanisms are likely to change. This generalization task has been studied in the causal inference literature under the rubric of transportability (Pearl and Bareinboim, 2011). While most transportability works focused on generalizing associational and interventional distributions, the generalization of counterfactual distributions has not been formally studied. In this paper, we investigate the transportability of counterfactuals from an arbitrary combination of observational and experimental distributions coming from disparate domains. Specifically, we introduce a sufficient and necessary graphical condition and develop an efficient, sound, and complete algorithm for transporting counterfactual quantities across domains in nonparametric settings. Failure of the algorithm implies the impossibility of generalizing the target counterfactual from the available data without further assumptions.-
dc.language영어-
dc.publisherJMLR-
dc.titleCounterfactual Transportability: A Formal Approach-
dc.typeArticle-
dc.citation.journaltitleProceedings of Machine Learning Research (PMLR)-
dc.identifier.wosid000899944904017-
dc.identifier.scopusid2-s2.0-85163134125-
dc.citation.endpage4390-
dc.citation.startpage4370-
dc.citation.volume162-
dc.description.isOpenAccessN-
dc.contributor.affiliatedAuthorLee, Sanghack-
dc.type.docTypeProceedings Paper-
dc.description.journalClass1-
dc.subject.keywordPlusDIAGRAMS-
Appears in Collections:
Files in This Item:
There are no files associated with this item.

Related Researcher

  • Graduate School of Data Science
Research Area Causal Decision Making, Causal Discovery, Causal Inference

Altmetrics

Item View & Download Count

  • mendeley

Items in S-Space are protected by copyright, with all rights reserved, unless otherwise indicated.

Share