Small-loss bounds for online learning with partial information
November 09, 2017 ยท Declared Dead ยท ๐ Annual Conference Computational Learning Theory
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Authors
Thodoris Lykouris, Karthik Sridharan, Eva Tardos
arXiv ID
1711.03639
Category
cs.LG: Machine Learning
Cross-listed
cs.DS
Citations
42
Venue
Annual Conference Computational Learning Theory
Last Checked
3 months ago
Abstract
We consider the problem of adversarial (non-stochastic) online learning with partial information feedback, where at each round, a decision maker selects an action from a finite set of alternatives. We develop a black-box approach for such problems where the learner observes as feedback only losses of a subset of the actions that includes the selected action. When losses of actions are non-negative, under the graph-based feedback model introduced by Mannor and Shamir, we offer algorithms that attain the so called "small-loss" $o(ฮฑL^{\star})$ regret bounds with high probability, where $ฮฑ$ is the independence number of the graph, and $L^{\star}$ is the loss of the best action. Prior to our work, there was no data-dependent guarantee for general feedback graphs even for pseudo-regret (without dependence on the number of actions, i.e. utilizing the increased information feedback). Taking advantage of the black-box nature of our technique, we extend our results to many other applications such as semi-bandits (including routing in networks), contextual bandits (even with an infinite comparator class), as well as learning with slowly changing (shifting) comparators. In the special case of classical bandit and semi-bandit problems, we provide optimal small-loss, high-probability guarantees of $\tilde{O}(\sqrt{dL^{\star}})$ for actual regret, where $d$ is the number of actions, answering open questions of Neu. Previous bounds for bandits and semi-bandits were known only for pseudo-regret and only in expectation. We also offer an optimal $\tilde{O}(\sqrt{ฮบL^{\star}})$ regret guarantee for fixed feedback graphs with clique-partition number at most $ฮบ$.
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