2021
DOI: 10.48550/arxiv.2106.03596
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Beyond Bandit Feedback in Online Multiclass Classification

Dirk van der Hoeven,
Federico Fusco,
Nicolò Cesa-Bianchi

Abstract: We study the problem of online multiclass classification in a setting where the learner's feedback is determined by an arbitrary directed graph. While including bandit feedback as a special case, feedback graphs allow a much richer set of applications, including filtering and label efficient classification. We introduce Gappletron, the first online multiclass algorithm that works with arbitrary feedback graphs. For this new algorithm, we prove surrogate regret bounds that hold, both in expectation and with hig… Show more

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