Learning to Cache With No Regrets
April 22, 2019 Β· Declared Dead Β· π IEEE Conference on Computer Communications
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Authors
Georgios S. Paschos, Apostolos Destounis, Luigi Vigneri, George Iosifidis
arXiv ID
1904.09849
Category
cs.NI: Networking & Internet
Citations
91
Venue
IEEE Conference on Computer Communications
Last Checked
4 months ago
Abstract
This paper introduces a novel caching analysis that, contrary to prior work, makes no modeling assumptions for the file request sequence. We cast the caching problem in the framework of Online Linear Optimization (OLO), and introduce a class of minimum regret caching policies, which minimize the losses with respect to the best static configuration in hindsight when the request model is unknown. These policies are very important since they are robust to popularity deviations in the sense that they learn to adjust their caching decisions when the popularity model changes. We first prove a novel lower bound for the regret of any caching policy, improving existing OLO bounds for our setting. Then we show that the Online Gradient Ascent (OGA) policy guarantees a regret that matches the lower bound, hence it is universally optimal. Finally, we shift our attention to a network of caches arranged to form a bipartite graph, and show that the Bipartite Subgradient Algorithm (BSA) has no regret
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