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Caching strategies based on popularity prediction in content delivery networks

机译:基于内容交付网络中的流行度预测的缓存策略

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In Content Delivery Networks (CDNs), knowing the popularity of video content helps the manager to take efficient decisions about which video content should be cached near the end users and also about the duplication degree of each video to satisfy the end user Quality of Experience. This paper focuses on predicting the popularity of video content, in terms of the number of requests. For that purpose, different software entities, called experts, compute the popularity value of each video content. Each expert uses its own prediction method. The accuracy of expert's prediction is evaluated by a loss function as the discrepancy between the prediction value and the real number of requests. We use real traces extracted from YouTube to compare different prediction methods and determine the best tuning of their parameters. The goal is to find the best trade-off between complexity and accuracy of the prediction methods used. Finally, we apply these prediction methods to caching. Prediction methods are compared in terms of cache Hit Ratio and Update Ratio with the well-known LFU caching strategy.
机译:在内容交付网络(CDN)中,了解视频内容的受欢迎程度有助于管理者做出有效的决定,即应在最终用户附近缓存哪些视频内容,以及有关每个视频的重复程度,以满足最终用户的体验质量。本文着重于根据请求数量来预测视频内容的普及程度。为此,称为专家的不同软件实体计算每种视频内容的受欢迎度值。每个专家都使用自己的预测方法。专家预测的准确性由损失函数评估,作为预测值与实际请求数之间的差异。我们使用从YouTube提取的真实轨迹来比较不同的预测方法,并确定其参数的最佳调整方式。目的是在所使用的预测方法的复杂性和准确性之间找到最佳平衡。最后,我们将这些预测方法应用于缓存。将预测方法在缓存命中率和更新率方面与众所周知的LFU缓存策略进行了比较。

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