Optimistic No-regret Algorithms for Discrete Caching

N. Mhaisen, Abhishek Sinha, G. Paschos, Georgios Iosifidis
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引用次数: 6

Abstract

We take a systematic look at the problem of storing whole files in a cache with limited capacity in the context of optimistic learning, where the caching policy has access to a prediction oracle (provided by, e.g., a Neural Network). The successive file requests are assumed to be generated by an adversary, and no assumption is made on the accuracy of the oracle. In this setting, we provide a universal lower bound for prediction-assisted online caching and proceed to design a suite of policies with a range of performance-complexity trade-offs. All proposed policies offer sublinear regret bounds commensurate with the accuracy of the oracle. Our results substantially improve upon all recently-proposed online caching policies, which, being unable to exploit the oracle predictions, offer only O(√T) regret. In this pursuit, we design, to the best of our knowledge, the first comprehensive optimistic Follow-the-Perturbed leader policy, which generalizes beyond the caching problem. We also study the problem of caching files with different sizes and the bipartite network caching problem. Finally, we evaluate the efficacy of the proposed policies through extensive numerical experiments using real-world traces.
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离散缓存的乐观无遗憾算法
在乐观学习的背景下,我们系统地研究了在有限容量的缓存中存储整个文件的问题,其中缓存策略可以访问预测oracle(由例如神经网络提供)。假定连续的文件请求是由攻击者生成的,并且不假定oracle的准确性。在此设置中,我们为预测辅助在线缓存提供了一个通用的下限,并继续设计一套具有一系列性能复杂性权衡的策略。所有提议的政策都提供了与预言的准确性相称的次线性后悔界限。我们的结果大大改进了最近提出的所有在线缓存策略,这些策略由于无法利用oracle预测,只提供0(√T)的遗憾。在这种追求中,我们设计了,据我们所知,第一个全面的乐观的跟随受扰领导者策略,它超越了缓存问题。我们还研究了不同大小文件的缓存问题和二部网络缓存问题。最后,我们通过使用真实世界轨迹的大量数值实验来评估所提出政策的有效性。
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