TL;DR
This paper introduces Loss Outcome Indistinguishability, a new framework for loss minimization and omniprediction, connecting it with fairness notions like calibrated multiaccuracy, and providing efficient algorithms for complex loss functions.
Contribution
It presents a generic template for Loss OI, decomposes it into calibration and multiaccuracy, and links it to fairness and geometric concepts, enabling efficient omnipredictor construction.
Findings
Loss OI implies omniprediction directly.
Calibrated multiaccuracy suffices for Loss OI in convex GLM losses.
Efficient algorithms for calibrated multiaccuracy are developed.
Abstract
We present a new perspective on loss minimization and the recent notion of Omniprediction through the lens of Outcome Indistingusihability. For a collection of losses and hypothesis class, omniprediction requires that a predictor provide a loss-minimization guarantee simultaneously for every loss in the collection compared to the best (loss-specific) hypothesis in the class. We present a generic template to learn predictors satisfying a guarantee we call Loss Outcome Indistinguishability. For a set of statistical tests--based on a collection of losses and hypothesis class--a predictor is Loss OI if it is indistinguishable (according to the tests) from Nature's true probabilities over outcomes. By design, Loss OI implies omniprediction in a direct and intuitive manner. We simplify Loss OI further, decomposing it into a calibration condition plus multiaccuracy for a class of functions…
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Videos
Loss Minimization through the lens of Outcome Indistinguishability· youtube
