随着时间推移改进预测的最优主动缓存

John Tadrous, A. Eryilmaz
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引用次数: 0

摘要

本文考虑了在大多数预测系统中,当未来需求预测随着时间的推移而改善时的最优主动缓存。特别是,我们的模型捕获了终端用户显示的相关需求模式,因为他们当前的活动逐渐揭示了有关他们未来需求的更多信息。在以前的工作中可以观察到,在服务成本随流量负载和静态预测超线性增长的网络中,可以利用主动缓存来随着时间的推移使负载变平并将成本降至最低。然而,随着预测质量的时变,在负载平坦化和准确的主动服务之间需要权衡。在这项工作中,我们制定并研究了时变预测下的最优主动缓存设计。我们的目标是在有限的主动服务窗口下最小化平均预期服务成本。我们建立了任何主动缓存策略的最小可实现成本的下限,然后我们开发了一个低复杂性的缓存策略,在负载平坦化和精确缓存之间取得平衡。我们证明了随着主动服务窗口的增长,我们提出的策略是渐近最优的。此外,我们还描述了其他非渐近情况,其中所提出的策略仍然是最优的。我们用数值模拟验证了我们的分析结果,并强调了相关的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On Optimal Proactive Caching with Improving Predictions over Time
This paper considers optimal proactive caching when future demand predictions improve over time as expected to happen in most prediction systems. In particular, our model captures the correlated demand pattern that is exhibited by end users as their current activity reveals progressively more information about their future demand. It is observed in previous work that, in a network where service costs grow superlinearly with the traffic load and static predictions, proactive caching can be harnessed to flatten the load over time and minimize the cost. Nevertheless, with time varying prediction quality, a tradeoff between load flattening and accurate proactive service emerges.In this work, we formulate and investigate the optimal proactive caching design under time-varying predictions. Our objective is to minimize the time average expected service cost given a finite proactive service window. We establish a lower bound on the minimal achievable cost by any proactive caching policy, then we develop a low complexity caching policy that strikes a balance between load flattening and accurate caching. We prove that our proposed policy is asymptotically optimal as the proactive service window grows. In addition, we characterize other non-asymptotic cases where the proposed policy remains optimal. We validate our analytical results with numerical simulation and highlight relevant insights.
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