An Efficient Black-Box Reduction from Online Learning to Multicalibration, and a New Route to $\Phi$-Regret Minimization
Gabriele Farina, Juan Carlos Perdomo

TL;DR
This paper introduces a black-box reduction from online learning to multicalibration, enabling efficient algorithms with high-dimensional guarantees and establishing a new connection to $\
Contribution
It provides the first general oracle-efficient multicalibration method and a novel reduction from multicalibration to $\
Findings
Achieves $\
Unifies and extends existing online multicalibration algorithms.
Establishes a new reduction from multicalibration to $\
Abstract
We give a Gordon-Greenwald-Marks (GGM) style black-box reduction from online learning to online multicalibration. Concretely, we show that to achieve high-dimensional multicalibration with respect to a class of functions H, it suffices to combine any no-regret learner over H with an expected variational inequality (EVI) solver. We also prove a converse statement showing that efficient multicalibration implies efficient EVI solving, highlighting how EVIs in multicalibration mirror the role of fixed points in the GGM result for -regret. This first set of results resolves the main open question in Garg, Jung, Reingold, and Roth (SODA '24), showing that oracle-efficient online multicalibration with -type guarantees is possible in full generality. Furthermore, our GGM-style reduction unifies the analyses of existing online multicalibration algorithms, enables new algorithms…
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