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High-Dimensional Feature Selection for Sample Efficient Treatment Effect Estimation

3 November 2020
Kristjan Greenewald
Dmitriy A. Katz-Rogozhnikov
Karthikeyan Shanmugam
    CML
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Abstract

The estimation of causal treatment effects from observational data is a fundamental problem in causal inference. To avoid bias, the effect estimator must control for all confounders. Hence practitioners often collect data for as many covariates as possible to raise the chances of including the relevant confounders. While this addresses the bias, this has the side effect of significantly increasing the number of data samples required to accurately estimate the effect due to the increased dimensionality. In this work, we consider the setting where out of a large number of covariates XXX that satisfy strong ignorability, an unknown sparse subset SSS is sufficient to include to achieve zero bias, i.e. ccc-equivalent to XXX. We propose a common objective function involving outcomes across treatment cohorts with nonconvex joint sparsity regularization that is guaranteed to recover SSS with high probability under a linear outcome model for YYY and subgaussian covariates for each of the treatment cohort. This improves the effect estimation sample complexity so that it scales with the cardinality of the sparse subset SSS and log⁡∣X∣\log |X|log∣X∣, as opposed to the cardinality of the full set XXX. We validate our approach with experiments on treatment effect estimation.

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