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首页> 外文期刊>IEEE Transactions on Cognitive Communications and Networking >Deep Reinforcement Learning-Based Edge Caching in Wireless Networks
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Deep Reinforcement Learning-Based Edge Caching in Wireless Networks

机译:无线网络中基于深度加强学习的高速缓存

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摘要

With the purpose to offload data traffic in wireless networks, content caching techniques have recently been studied intensively. Using these techniques and caching a portion of the popular files at the local content servers, the users can be served with less delay. Most of the content replacement policies are based on the content popularity, that depends on the users' preferences. In practice, such information varies over time. Therefore, an approach to determine the file popularity patterns must be incorporated into caching policies. In this context, we study content caching at the wireless network edge using a deep reinforcement learning framework with Wolpertinger architecture. In particular, we propose deep actor-critic reinforcement learning based policies for both centralized and decentralized content caching. For centralized edge caching, we aim at maximizing the cache hit rate. In decentralized edge caching, we consider both the cache hit rate and transmission delay as performance metrics. The proposed frameworks are assumed to neither have any prior information on the file popularities nor know the potential variations in such information. Via simulation results, the superiority of the proposed frameworks is verified by comparing them with other policies, including least frequently used (LFU), least recently used (LRU), and first-in-first-out (FIFO) policies.
机译:目的是卸载无线网络中的数据流量,最近研究了内容缓存技术。使用这些技术并在本地内容服务器处高速缓存流行文件的一部分,可以使用较少的延迟服务。大多数内容替换策略都基于内容流行度,这取决于用户的首选项。在实践中,这些信息随着时间的推移而变化。因此,必须将文件流行度模式确定为缓存策略。在这种情况下,我们使用具有狼群架构的深度加强学习框架研究无线网络边缘的内容缓存。特别是,我们为集中和分散内容缓存的深度演员批评批评策略提出了深深演员批评的策略。对于集中式高速缓存,我们的目标是最大化缓存命中率。在分散的边缘缓存中,我们考虑缓存命中率和传输延迟作为性能指标。假设提出的框架既不有关于文件普及的任何先前信息,也不知道这些信息的潜在变化。通过仿真结果,通过将其与其他策略进行比较来验证所提出的框架的优越性,包括最不常用(LFU),最近使用(LRU)和首先第一输出(FIFO)策略。

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