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Popularity-Driven Content Caching

机译:人气驱动的内容缓存

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This paper presents a novel cache replacement method--Popularity-Driven Content Caching (PopCaching). PopCaching learns the popularity of content and uses it to determine which content it should store and which it should evict from the cache. Popularity is learned in an online fashion, requires no training phase and hence, it is more responsive to continuously changing trends of content popularity. We prove that the learning regret of PopCaching (i.e., the gap between the hit rate achieved by PopCaching and that by the optimal caching policy with hindsight) is sublinear in the number of content requests. Therefore, PopCaching converges fast and asymptotically achieves the optimal cache hit rate. We further demonstrate the effectiveness of PopCaching by applying it to a movie.douban.com dataset that contains over 38 million requests. Our results show significant cache hit rate lift compared to existing algorithms, and the improvements can exceed 40% when the cache capacity is limited. In addition, PopCaching has low complexity.
机译:本文提出了一种新型缓存替换方法 - 普及驱动内容缓存(POPCACHING)。 POPCACHING学会了内容的普及,并使用它来确定它应该存储的内容以及它应该从缓存中逐出它。受欢迎程度是以在线方式学习的,不需要培训阶段,因此,对不断变化的内容人气趋势更加敏感。我们证明了Popcaching的学习遗憾(即,通过POPCACHING实现的命中率之间的差距以及通过Hindsight的最佳缓存政策)在内容请求的数量中是Sublinear。因此,POPCACHING会收敛快速,渐近地实现最佳高速缓存命中率。我们进一步展示了PopCaching通过将其应用于包含超过3800万个请求的DataSet来展示PopCaching的有效性。与现有算法相比,我们的结果显示出显着的缓存命中率提升,并且当高速缓存容量有限时,改善可能超过40%。此外,Popcaching的复杂性低。

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