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Effects of treatment on the treated: identification and generalization

Effects of treatment on the treated: identification and generalization
Effects of treatment on the treated: identification and generalization
Many applications of causal analysis call for assessing, retrospectively, the effect of withholding an action that has in fact been implemented. This counterfactual quantity, sometimes called "effect of treatment on the treated," (ETT) have been used to evaluate educational programs, critic public policies, and justify individual decision making. In this paper we explore the conditions under which ETT can be estimated from (i.e., identified in) experimental and/or observational studies. We show that, when the action invokes a singleton variable, the conditions for ETT identification have simple characterizations in terms of causal diagrams. We further give a graphical characterization of the conditions under which the effects of multiple treatments on the treated can be identified, as well as ways in which the ETT estimand can be constructed from both interventional and observational distributions.
514-521
AUAI Press
Shpitser, Ilya
4d295b9b-39e8-417f-b38d-fbb5d7df6992
Pearl, Judea
d4317e37-9d5f-4fdc-84ad-c7bf98f99476
Shpitser, Ilya
4d295b9b-39e8-417f-b38d-fbb5d7df6992
Pearl, Judea
d4317e37-9d5f-4fdc-84ad-c7bf98f99476

Shpitser, Ilya and Pearl, Judea (2009) Effects of treatment on the treated: identification and generalization. In Proceedings of the Twenty Fifth Conference on Uncertainty in Artificial Intelligence (UAI-09). AUAI Press. pp. 514-521 .

Record type: Conference or Workshop Item (Paper)

Abstract

Many applications of causal analysis call for assessing, retrospectively, the effect of withholding an action that has in fact been implemented. This counterfactual quantity, sometimes called "effect of treatment on the treated," (ETT) have been used to evaluate educational programs, critic public policies, and justify individual decision making. In this paper we explore the conditions under which ETT can be estimated from (i.e., identified in) experimental and/or observational studies. We show that, when the action invokes a singleton variable, the conditions for ETT identification have simple characterizations in terms of causal diagrams. We further give a graphical characterization of the conditions under which the effects of multiple treatments on the treated can be identified, as well as ways in which the ETT estimand can be constructed from both interventional and observational distributions.

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Published date: 2009
Organisations: Statistics

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Local EPrints ID: 350576
URI: http://eprints.soton.ac.uk/id/eprint/350576
PURE UUID: ddc82347-8753-43f9-a2f3-7fc43f6af91d

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Date deposited: 04 Apr 2013 13:59
Last modified: 14 Mar 2024 13:27

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Contributors

Author: Ilya Shpitser
Author: Judea Pearl

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