The Sample Complexity of Multicalibration
Natalie Collina, Jiuyao Lu, Georgy Noarov, Aaron Roth

Abstract
We study the minimax sample complexity of multicalibration in the batch setting. A learner observes i.i.d. samples from an unknown distribution and must output a (possibly randomized) predictor whose population multicalibration error, measured by Expected Calibration Error (ECE), is at most with respect to a given family of groups. For every fixed , in the regime , we prove that samples are necessary and sufficient, up to polylogarithmic factors. The lower bound holds even for randomized predictors, and the upper bound is realized by a randomized predictor obtained via an online-to-batch reduction. This separates the sample complexity of multicalibration from that of marginal calibration, which scales as , and shows that mean-ECE multicalibration is as…
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