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arxiv: 1210.4842 · v1 · pith:SVLDOOJRnew · submitted 2012-10-16 · 💻 cs.AI · stat.ME

Causal Inference by Surrogate Experiments: z-Identifiability

classification 💻 cs.AI stat.ME
keywords z-identifiabilityexperimentscausalcompletenessdo-calculuseffectidentifiabilityordinary
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We address the problem of estimating the effect of intervening on a set of variables X from experiments on a different set, Z, that is more accessible to manipulation. This problem, which we call z-identifiability, reduces to ordinary identifiability when Z = empty and, like the latter, can be given syntactic characterization using the do-calculus [Pearl, 1995; 2000]. We provide a graphical necessary and sufficient condition for z-identifiability for arbitrary sets X,Z, and Y (the outcomes). We further develop a complete algorithm for computing the causal effect of X on Y using information provided by experiments on Z. Finally, we use our results to prove completeness of do-calculus relative to z-identifiability, a result that does not follow from completeness relative to ordinary identifiability.

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