Pure Entropic Regularization for Metrical Task Systems

COLT(2022)

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摘要
We show that on every n-point HST metric, there is a randomized online algorithm for metrical task systems (MTS) that is 1-competitive for service costs and O(log n)-competitive for movement costs. In general, these refined guarantees are optimal up to the implicit constant. While an O(log n)-competitive algorithm for MTS on HST metrics was developed by Bubeck et al. (SODA'19), that approach could only establish an O((log n)2)-competitive ratio when the service costs are required to be O(1)-competitive. Our algorithm can be viewed as an instantiation of online mirror descent with the regularizer derived from a multiscale conditional entropy.In fact, our algorithm satisfies a set of even more refined guarantees; we are able to exploit this property to combine it with known random embedding theorems and obtain, for any n-point metric space, a randomized algorithm that is 1-competitive for service costs and O((log n)2)-competitive for movement costs.
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关键词
online algorithms, competitive analysis, mirror descent, metrical task systems, decision making under uncertainty
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