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Main Authors: Oz, Omri Bar, Lechner, Tosca, Sabato, Sivan
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2510.07245
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author Oz, Omri Bar
Lechner, Tosca
Sabato, Sivan
author_facet Oz, Omri Bar
Lechner, Tosca
Sabato, Sivan
contents We study the theoretical properties of the interactive learning protocol Discriminative Feature Feedback (DFF) (Dasgupta et al., 2018). The DFF learning protocol uses feedback in the form of discriminative feature explanations. We provide the first systematic study of DFF in a general framework that is comparable to that of classical protocols such as supervised learning and online learning. We study the optimal mistake bound of DFF in the realizable and the non-realizable settings, and obtain novel structural results, as well as insights into the differences between Online Learning and settings with richer feedback such as DFF. We characterize the mistake bound in the realizable setting using a new notion of dimension. In the non-realizable setting, we provide a mistake upper bound and show that it cannot be improved in general. Our results show that unlike Online Learning, in DFF the realizable dimension is insufficient to characterize the optimal non-realizable mistake bound or the existence of no-regret algorithms.
format Preprint
id arxiv_https___arxiv_org_abs_2510_07245
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Discriminative Feature Feedback with General Teacher Classes
Oz, Omri Bar
Lechner, Tosca
Sabato, Sivan
Machine Learning
We study the theoretical properties of the interactive learning protocol Discriminative Feature Feedback (DFF) (Dasgupta et al., 2018). The DFF learning protocol uses feedback in the form of discriminative feature explanations. We provide the first systematic study of DFF in a general framework that is comparable to that of classical protocols such as supervised learning and online learning. We study the optimal mistake bound of DFF in the realizable and the non-realizable settings, and obtain novel structural results, as well as insights into the differences between Online Learning and settings with richer feedback such as DFF. We characterize the mistake bound in the realizable setting using a new notion of dimension. In the non-realizable setting, we provide a mistake upper bound and show that it cannot be improved in general. Our results show that unlike Online Learning, in DFF the realizable dimension is insufficient to characterize the optimal non-realizable mistake bound or the existence of no-regret algorithms.
title Discriminative Feature Feedback with General Teacher Classes
topic Machine Learning
url https://arxiv.org/abs/2510.07245