Data-Driven Influence Functions for Optimization-Based Causal Inference
Michael I. Jordan, Yixin Wang, Angela Zhou

TL;DR
This paper introduces a constructive algorithm to approximate influence functions for causal inference functionals, addressing the challenge of unknown distributions and enabling bias adjustment in complex estimands.
Contribution
It develops a method to approximate Gateaux derivatives for causal inference functionals from data, analyzing their relationships and requirements for preserving statistical benefits.
Findings
Approximate influence functions for causal functionals using finite differences.
Rate double robustness can be preserved with appropriate numerical approximation.
Constructive approaches facilitate bias adjustments under complex constraints.
Abstract
We study a constructive algorithm that approximates Gateaux derivatives for statistical functionals by finite differencing, with a focus on functionals that arise in causal inference. We study the case where probability distributions are not known a priori but need to be estimated from data. These estimated distributions lead to empirical Gateaux derivatives, and we study the relationships between empirical, numerical, and analytical Gateaux derivatives. Starting with a case study of the interventional mean (average potential outcome), we delineate the relationship between finite differences and the analytical Gateaux derivative. We then derive requirements on the rates of numerical approximation in perturbation and smoothing that preserve the statistical benefits of one-step adjustments, such as rate double robustness. We then study more complicated functionals such as dynamic…
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Taxonomy
TopicsHealth Systems, Economic Evaluations, Quality of Life · Advanced Causal Inference Techniques · Statistical Methods and Inference
