Litcius/Paper detail

Double machine learning and automated confounder selection: A cautionary tale

Paul Hünermund, Beyers Louw, Itamar Caspi

2023Journal of Causal Inference22 citationsDOIOpen Access PDF

Abstract

Abstract Double machine learning (DML) has become an increasingly popular tool for automated variable selection in high-dimensional settings. Even though the ability to deal with a large number of potential covariates can render selection-on-observables assumptions more plausible, there is at the same time a growing risk that endogenous variables are included, which would lead to the violation of conditional independence. This article demonstrates that DML is very sensitive to the inclusion of only a few “bad controls” in the covariate space. The resulting bias varies with the nature of the theoretical causal model, which raises concerns about the feasibility of selecting control variables in a data-driven way.

Topics & Concepts

Selection (genetic algorithm)Computer scienceArtificial intelligenceConfoundingMachine learningNatural language processingStatisticsMathematicsAdvanced Causal Inference TechniquesStatistical Methods and InferenceStatistical Methods and Bayesian Inference