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Cocktail Edge Caching: Ride Dynamic Trends of Content Popularity with Ensemble Learning

机译:鸡尾酒边缘缓存:通过集合学习乘坐内容人气的动态趋势

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Edge caching will play a critical role in facilitating the emerging content-rich applications. However, it faces many new challenges, in particular, the highly dynamic content popularity and the heterogeneous caching configurations. In this paper, we propose Cocktail Edge Caching, that tackles the dynamic popularity and heterogeneity through ensemble learning. Instead of trying to find a single dominating caching policy for all the caching scenarios, we employ an ensemble of constituent caching policies and adaptively select the best-performing policy to control the cache. Towards this goal, we first show through formal analysis and experiments that different variations of the LFU and LRU polices have complementary performance in different caching scenarios. We further develop a novel caching algorithm that enhances LFU/LRU with deep recurrent neural network (LSTM) based time-series analysis. Finally, we develop a deep reinforcement learning agent that adaptively combines base caching policies according to their virtual hit ratios on parallel virtual caches. Through extensive experiments driven by real content requests from two large video streaming platforms, we demonstrate that CEC not only consistently outperforms all single policies, but also improves the robustness of them. CEC can be well generalized to different caching scenarios with low computation overheads for deployment.
机译:边缘缓存将在促进丰富的内容的应用程序中发挥关键作用。然而,它面临着许多新的挑战,特别是高度动态的内容普及和异质缓存配置。在本文中,我们提出了鸡尾酒边缘缓存,通过集合学习来解决动态流行度和异质性。除了尝试找到所有缓存方案的单个主导的缓存策略,而不是尝试找到组成的缓存策略的集合,并自适应地选择最佳策略来控制缓存。为了实现这一目标,我们首先通过正式分析和实验来展示LFU和LRU政策的不同变化在不同的缓存方案中具有互补性能。我们进一步开发了一种新型缓存算法,可增强LFU / LRU,基于深度复发性神经网络(LSTM)的时间序列分析。最后,我们开发了一个深度加强学习代理,可根据并行虚拟缓存的虚拟命中比,自适应地结合基础缓存策略。通过由来自两个大型视频流平台的真实内容请求驱动的大量实验,我们证明CEC不仅始终如一地优于所有单一策略,而且还提高了它们的鲁棒性。 CEC可以很好地广泛化,以便为部署的低计算开销具有低计算开销。

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