English

Online Minimax Multiobjective Optimization: Multicalibeating and Other Applications

Machine Learning 2022-10-14 v3 Data Structures and Algorithms Computer Science and Game Theory

Abstract

We introduce a simple but general online learning framework in which a learner plays against an adversary in a vector-valued game that changes every round. Even though the learner's objective is not convex-concave (and so the minimax theorem does not apply), we give a simple algorithm that can compete with the setting in which the adversary must announce their action first, with optimally diminishing regret. We demonstrate the power of our framework by using it to (re)derive optimal bounds and efficient algorithms across a variety of domains, ranging from multicalibration to a large set of no regret algorithms, to a variant of Blackwell's approachability theorem for polytopes with fast convergence rates. As a new application, we show how to ``(multi)calibeat'' an arbitrary collection of forecasters -- achieving an exponentially improved dependence on the number of models we are competing against, compared to prior work.

Keywords

Cite

@article{arxiv.2108.03837,
  title  = {Online Minimax Multiobjective Optimization: Multicalibeating and Other Applications},
  author = {Daniel Lee and Georgy Noarov and Mallesh Pai and Aaron Roth},
  journal= {arXiv preprint arXiv:2108.03837},
  year   = {2022}
}

Comments

Appears in NeurIPS 2022

R2 v1 2026-06-24T04:56:15.164Z