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Hölder Bounds for Sensitivity Analysis in Causal Reasoning

Publication ,  Journal Article
Assaad, S; Zeng, S; Pfister, H; Li, F; Carin, L
July 9, 2021

We examine interval estimation of the effect of a treatment T on an outcome Y given the existence of an unobserved confounder U. Using H\"older's inequality, we derive a set of bounds on the confounding bias |E[Y|T=t]-E[Y|do(T=t)]| based on the degree of unmeasured confounding (i.e., the strength of the connection U->T, and the strength of U->Y). These bounds are tight either when U is independent of T or when U is independent of Y given T (when there is no unobserved confounding). We focus on a special case of this bound depending on the total variation distance between the distributions p(U) and p(U|T=t), as well as the maximum (over all possible values of U) deviation of the conditional expected outcome E[Y|U=u,T=t] from the average expected outcome E[Y|T=t]. We discuss possible calibration strategies for this bound to get interval estimates for treatment effects, and experimentally validate the bound using synthetic and semi-synthetic datasets.

Duke Scholars

Publication Date

July 9, 2021
 

Citation

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Assaad, S., Zeng, S., Pfister, H., Li, F., & Carin, L. (2021). Hölder Bounds for Sensitivity Analysis in Causal Reasoning.
Assaad, Serge, Shuxi Zeng, Henry Pfister, Fan Li, and Lawrence Carin. “Hölder Bounds for Sensitivity Analysis in Causal Reasoning,” July 9, 2021.
Assaad S, Zeng S, Pfister H, Li F, Carin L. Hölder Bounds for Sensitivity Analysis in Causal Reasoning. 2021 Jul 9;
Assaad S, Zeng S, Pfister H, Li F, Carin L. Hölder Bounds for Sensitivity Analysis in Causal Reasoning. 2021 Jul 9;

Publication Date

July 9, 2021