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No-Regret Caching via Online Mirror Descent

29 January 2021
T. Si Salem
Giovanni Neglia
Stratis Ioannidis
ArXiv (abs)PDFHTML
Abstract

We study an online caching problem in which requests can be served by a local cache to avoid retrieval costs from a remote server. The cache can update its state after a batch of requests and store an arbitrarily small fraction of each content. We study no-regret algorithms based on Online Mirror Descent (OMD) strategies. We show that the optimal OMD strategy depends on the request diversity present in a batch. We also prove that, when the cache must store the entire content, rather than a fraction, OMD strategies can be coupled with a randomized rounding scheme that preserves regret guarantees.

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