Orthogonal Causal Calibration
Justin Whitehouse, Christopher Jung, Vasilis Syrgkanis, Bryan Wilder,, Zhiwei Steven Wu

TL;DR
This paper introduces algorithms for calibrating causal effect estimators by reducing the problem to standard predictive model calibration, applicable to various causal inference tasks and loss functions.
Contribution
It develops general calibration algorithms for causal estimators using nuisance-dependent losses, extending calibration methods to causal inference with theoretical guarantees.
Findings
Algorithms work with observational and synthetic data
Calibration error bounds are established for the proposed methods
Any existing calibration method can be adapted for causal estimators
Abstract
Estimates of heterogeneous treatment effects such as conditional average treatment effects (CATEs) and conditional quantile treatment effects (CQTEs) play an important role in real-world decision making. Given this importance, one should ensure these estimates are calibrated. While there is a rich literature on calibrating estimators of non-causal parameters, very few methods have been derived for calibrating estimators of causal parameters, or more generally estimators of quantities involving nuisance parameters. In this work, we develop general algorithms for reducing the task of causal calibration to that of calibrating a standard (non-causal) predictive model. Throughout, we study a notion of calibration defined with respect to an arbitrary, nuisance-dependent loss , under which we say an estimator is calibrated if its predictions cannot be changed on any level set…
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Taxonomy
TopicsFault Detection and Control Systems
MethodsSparse Evolutionary Training
