Efficient Online Linear Optimization with Approximation Algorithms

September 10, 2017 ยท Declared Dead ยท ๐Ÿ› Neural Information Processing Systems

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Authors Dan Garber arXiv ID 1709.03093 Category cs.LG: Machine Learning Cross-listed math.OC Citations 27 Venue Neural Information Processing Systems Last Checked 3 months ago
Abstract
We revisit the problem of \textit{online linear optimization} in case the set of feasible actions is accessible through an approximated linear optimization oracle with a factor $ฮฑ$ multiplicative approximation guarantee. This setting is in particular interesting since it captures natural online extensions of well-studied \textit{offline} linear optimization problems which are NP-hard, yet admit efficient approximation algorithms. The goal here is to minimize the $ฮฑ$\textit{-regret} which is the natural extension of the standard \textit{regret} in \textit{online learning} to this setting. We present new algorithms with significantly improved oracle complexity for both the full information and bandit variants of the problem. Mainly, for both variants, we present $ฮฑ$-regret bounds of $O(T^{-1/3})$, were $T$ is the number of prediction rounds, using only $O(\log{T})$ calls to the approximation oracle per iteration, on average. These are the first results to obtain both average oracle complexity of $O(\log{T})$ (or even poly-logarithmic in $T$) and $ฮฑ$-regret bound $O(T^{-c})$ for a constant $c>0$, for both variants.
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