Metric Entropy Duality and the Sample Complexity of Outcome Indistinguishability
Lunjia Hu, Charlotte Peale, Omer Reingold

TL;DR
This paper establishes the first sample complexity characterizations for outcome indistinguishability, linking it to metric entropy duality and fat-shattering dimension, and reveals a significant separation between realizable and agnostic cases.
Contribution
It introduces the first sample complexity bounds for outcome indistinguishability, connecting them to metric entropy duality and fat-shattering dimension, and highlights a separation from PAC learning.
Findings
Sample complexity characterized by metric entropy of P and D.
Nearly tight variant of metric entropy duality proved.
Strong separation between realizable and agnostic outcome indistinguishability.
Abstract
We give the first sample complexity characterizations for outcome indistinguishability, a theoretical framework of machine learning recently introduced by Dwork, Kim, Reingold, Rothblum, and Yona (STOC 2021). In outcome indistinguishability, the goal of the learner is to output a predictor that cannot be distinguished from the target predictor by a class of distinguishers examining the outcomes generated according to the predictors' predictions. In the distribution-specific and realizable setting where the learner is given the data distribution together with a predictor class containing the target predictor, we show that the sample complexity of outcome indistinguishability is characterized by the metric entropy of w.r.t. the dual Minkowski norm defined by , and equivalently by the metric entropy of w.r.t. the dual Minkowski norm defined by . This equivalence…
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Taxonomy
TopicsBayesian Modeling and Causal Inference
