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The Scope of Multicalibration: Characterizing Multicalibration via Property Elicitation

16 February 2023
Georgy Noarov
Aaron Roth
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Abstract

We make a connection between multicalibration and property elicitation and show that (under mild technical conditions) it is possible to produce a multicalibrated predictor for a continuous scalar distributional property Γ\GammaΓ if and only if Γ\GammaΓ is elicitable. On the negative side, we show that for non-elicitable continuous properties there exist simple data distributions on which even the true distributional predictor is not calibrated. On the positive side, for elicitable Γ\GammaΓ, we give simple canonical algorithms for the batch and the online adversarial setting, that learn a Γ\GammaΓ-multicalibrated predictor. This generalizes past work on multicalibrated means and quantiles, and in fact strengthens existing online quantile multicalibration results. To further counter-weigh our negative result, we show that if a property Γ1\Gamma^1Γ1 is not elicitable by itself, but is elicitable conditionally on another elicitable property Γ0\Gamma^0Γ0, then there is a canonical algorithm that jointly multicalibrates Γ1\Gamma^1Γ1 and Γ0\Gamma^0Γ0; this generalizes past work on mean-moment multicalibration. Finally, as applications of our theory, we provide novel algorithmic and impossibility results for fair (multicalibrated) risk assessment.

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