Metrical Task Systems with Online Machine Learned Advice
Machine learning algorithms are designed to make accurate predictions of the future based on existing data, while online algorithms seek to bound some performance measure (typically the competitive ratio) without knowledge of the future. Lykouris and Vassilvitskii demonstrated that augmenting online...
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Zusammenfassung: | Machine learning algorithms are designed to make accurate predictions of the
future based on existing data, while online algorithms seek to bound some
performance measure (typically the competitive ratio) without knowledge of the
future. Lykouris and Vassilvitskii demonstrated that augmenting online
algorithms with a machine learned predictor can provably decrease the
competitive ratio under as long as the predictor is suitably accurate.
In this work we apply this idea to the Online Metrical Task System problem,
which was put forth by Borodin, Linial, and Saks as a general model for dynamic
systems processing tasks in an online fashion. We focus on the specific class
of uniform task systems on $n$ tasks, for which the best deterministic
algorithm is $O(n)$ competitive and the best randomized algorithm is $O(\log
n)$ competitive.
By giving an online algorithms access to a machine learned oracle with
absolute predictive error bounded above by $\eta_0$, we construct a
$\Theta(\min(\sqrt{\eta_0}, \log n))$ competitive algorithm for the uniform
case of the metrical task systems problem. We also give a $\Theta(\log \eta_0)$
lower bound on the competitive ratio of any randomized algorithm. |
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DOI: | 10.48550/arxiv.2012.09394 |