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A Unifying Perspective on Multi-Calibration: Unleashing Game Dynamics for Multi-Objective Learning

Abstract

We provide a unifying framework for the design and analysis of multi-calibrated and moment-multi-calibrated predictors. Placing the multi-calibration problem in the general setting of \emph{multi-objective learning} -- where learning guarantees must hold simultaneously over a set of distributions and loss functions -- we exploit connections to game dynamics to obtain state-of-the-art guarantees for a diverse set of multi-calibration learning problems. In addition to shedding light on existing multi-calibration guarantees, and greatly simplifying their analysis, our approach yields a 1/ϵ21/\epsilon^2 improvement in the number of oracle calls compared to the state-of-the-art algorithm of Jung et al. 2021 for learning deterministic moment-calibrated predictors and an exponential improvement in kk compared to the state-of-the-art algorithm of Gopalan et al. 2022 for learning a kk-class multi-calibrated predictor. Beyond multi-calibration, we use these game dynamics to address existing and emerging considerations in the study of group fairness and multi-distribution learning.

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