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Online Improper Learning with an Approximation Oracle

20 April 2018
Elad Hazan
Wei Hu
Yuanzhi Li
Zhiyuan Li
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Abstract

We revisit the question of reducing online learning to approximate optimization of the offline problem. In this setting, we give two algorithms with near-optimal performance in the full information setting: they guarantee optimal regret and require only poly-logarithmically many calls to the approximation oracle per iteration. Furthermore, these algorithms apply to the more general improper learning problems. In the bandit setting, our algorithm also significantly improves the best previously known oracle complexity while maintaining the same regret.

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