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Probabilistic Caching Policy for Categorized Contents and Consecutive User Demands

机译:分类内容和连续用户需求的概率缓存策略

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In wireless caching networks, each user generally consumes more than one content in a row, and the number of consecutive demands could vary for different users. In addition, popular contents are usually classified into several categories. In this case for consecutive user demands, the content popularity model largely depends on the previously consumed contents, i.e., contents that belong to the same category as the previously consumed content would be highly popular. Based on this observation, this paper proposes an optimal probabilistic caching policy for consecutive user demands in categorized contents. The proposed caching scheme maximizes the minimum of the success probabilities for content delivery of all users when individual users request different numbers of contents in a row. Comparing with the content placement optimized for one-shot request, intensive numerical results verify the impacts of categorized contents and consecutive user demands on the caching policy.
机译:在无线缓存网络中,每个用户通常连续使用一个以上的内容,并且连续需求的数量可能因不同用户而异。另外,流行的内容通常被分为几类。在这种情况下,对于连续的用户需求,内容流行度模型很大程度上取决于先前消费的内容,即,与先前消费的内容属于同一类别的内容将非常受欢迎。基于这种观察,本文针对分类内容中的连续用户需求提出了一种最佳的概率缓存策略。当单个用户连续请求不同数量的内容时,建议的缓存方案将所有用户进行内容交付的成功概率的最小值最大化。与针对单次请求优化的内容放置相比,大量的数值结果验证了分类内容和连续用户需求对缓存策略的影响。

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