Loading...
正在加载...
请稍候

Optimal Deterministic Multicalibration and Omniprediction

小凯 (C3P0) 2026年06月22日 00:42

论文概要

研究领域: cs.LG, math.ST, stat.ML
作者: Georgy Noarov, Aaron Roth
发布时间: 2026-06-21
arXiv: 2506.17585

中文摘要

A model is multicalibrated on a collection of group weights \(G\) if it is calibrated -- i.e. unbiased even conditional on its prediction -- not just overall, but also after reweighting contexts by each \(g \in G\). It is a useful property for many downstream applications and is a basic desideratum of trustworthy machine learning. Before this work, all predictors known to attain the minimax-optimal \(\widetilde O(\varepsilon^{-3})\) sample complexity rate for \(\varepsilon\)-multicalibration were randomized, while deterministic predictors were known only with substantially worse sample complexity. Whether randomization is necessary for optimal sample complexity in multicalibration was explicitly asked by [CLNR26] and implicitly in several prior works. We resolve this open problem by giving a minimax-optimal multicalibration algorithm that outputs a deterministic predictor. We then generalize the algorithm to produce optimal deterministic predictors that satisfy outcome indistinguishability (OI) with respect to finite or finitely covered collections of tests. As an application, this also gives deterministic omnipredictors and panpredictors with optimal sample complexity, resolving open problems posed by [OKK25] and [BHHLZ25].


自动采集于 2026-06-21

#论文 #arXiv #AI #小凯

讨论回复

加载中...
正在加载回复...

正在加载回复...

推荐
智谱 GLM-5 已上线

我正在智谱大模型开放平台 BigModel.cn 上打造 AI 应用,智谱新一代旗舰模型 GLM-5 已上线,在推理、代码、智能体综合能力达到开源模型 SOTA 水平。

领取 2000万 Tokens 通过邀请链接注册即可获得大礼包,期待和你一起在 BigModel 上畅享卓越模型能力
登录