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Causal Bias Quantification for Continuous Treatments

2021-06-17Unverified0· sign in to hype

Gianluca Detommaso, Michael Brückner, Philip Schulz, Victor Chernozhukov

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Abstract

We extend the definition of the marginal causal effect to the continuous treatment setting and develop a novel characterization of causal bias in the framework of structural causal models. We prove that our derived bias expression is zero if, and only if, the causal effect is identifiable via covariate adjustment. We show that under some restrictions on the structural equations, the causal bias can be estimated efficiently and allows for causal regularization of predictive probabilistic models. We demonstrate the effectiveness of our method for causal bias quantification in various settings where (not) controlling for certain covariates would introduce causal bias.

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