在线网络缓存遗憾的基本限制

Rajarshi Bhattacharjee, Subhankar Banerjee, Abhishek Sinha
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引用次数: 5

摘要

内容分发网络(CDN)中文件的最佳缓存是一个基本的和日益增长的商业利益问题。尽管目前使用了许多不同的缓存算法,但从在线学习的角度来看,网络缓存算法的基本性能限制至今仍然知之甚少。在本文中,我们在以下两种情况下解决了这个问题:(1)单个用户连接到单个缓存,以及(2)一组用户和一组缓存通过二部网络互连。最近,一种基于在线梯度的编码缓存策略被证明具有次线性遗憾。然而,由于缺乏已知的遗憾下界,所提议的政策的最优性问题仍未解决。在本文中,我们通过在上述设置下推导紧非渐近遗憾下界来解决这个问题。除此之外,我们还提出了一种新的基于“跟踪被扰乱的领导者”的非编码缓存策略,该策略具有接近最优的遗憾。从技术上讲,下界是通过将在线缓存问题与经典的扔球到箱子的概率范式联系起来得到的。我们的证明广泛地使用了关于人口最多的一半箱子的预期负荷的新结果,这也可能是独立的兴趣。我们通过对流行的MovieLens数据集进行实验来评估缓存策略的性能,并以设计建议和开放问题列表来总结本文。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fundamental Limits on the Regret of Online Network-Caching
Optimal caching of files in a content distribution network (CDN) is a problem of fundamental and growing commercial interest. Although many different caching algorithms are in use today, the fundamental performance limits of the network caching algorithms from an online learning point-of-view remain poorly understood to date. In this paper, we resolve this question in the following two settings: (1) a single user connected to a single cache, and (2) a set of users and a set of caches interconnected through a bipartite network. Recently, an online gradient-based coded caching policy was shown to enjoy sub-linear regret. However, due to the lack of known regret lower bounds, the question of the optimality of the proposed policy was left open. In this paper, we settle this question by deriving tight non-asymptotic regret lower bounds in the above settings. In addition to that, we propose a new Follow-the-Perturbed-Leader-based uncoded caching policy with near-optimal regret. Technically, the lower-bounds are obtained by relating the online caching problem to the classic probabilistic paradigm of balls-into-bins. Our proofs make extensive use of a new result on the expected load in the most populated half of the bins, which might also be of independent interest. We evaluate the performance of the caching policies by experimenting with the popular MovieLens dataset and conclude the paper with design recommendations and a list of open problems.
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