GNN-GM:命名数据网络的主动缓存方案

Jiacheng Hou, Haoye Lu, A. Nayak
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引用次数: 1

摘要

随着人们花更多的时间在线观看电影和分享视频,为用户提供满意的体验质量(QoE)至关重要。本文旨在借助命名数据网络(NDN)的网络内缓存特性,通过缓存来改善用户体验。我们提出了一种图神经网络增益最大化(GNN-GM)缓存放置算法。首先,我们使用GNN模型来预测用户对未观看视频的评分。其次,我们将视频的总预测评分作为缓存视频的增益。第三,我们提出了一种缓存放置算法,以最大化缓存收益并主动缓存视频。我们还设计了一种基于视频缓存增益的缓存替换策略。我们利用一个真实的数据集来评估我们的缓存策略。与最先进的缓存方法相比,实验结果表明,我们的缓存策略将缓存命中率提高了25%,延迟减少了5%,服务器负载减少了7%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
GNN-GM: A Proactive Caching Scheme for Named Data Networking
As people spend more time watching movies and sharing videos online, it is crucial to provide users with a satisfactory quality of experience (QoE). With the help of the in-network caching feature in named data networking (NDN), our paper aims to improve user experience through caching. We propose a graph neural network-gain maximization (GNN-GM) cache placement algorithm. First, we use a GNN model to predict users’ ratings of unviewed videos. Second, we consider the total predicted rating of a video as the gain of caching the video. Third, we propose a cache placement algorithm to maximize the caching gains and proactively cache videos. We also design a caching replacement strategy based on the gain of caching the video. We utilize a real-world dataset to evaluate our caching strategy. Compared to state-of-the-art caching approaches, experimental results show that our caching policy improves cache hit rate by 25%, reduces latency by 5%, and reduces server load by 7%.
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