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Monte-Carlo Tree Search Aided Contextual Online Learning Approach for Wireless Caching

机译:Monte-Carlo树搜索有助于无线缓存的辅助上下文在线学习方法

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Caching popular contents at the edge of wireless networks has recently emerged as a promising technique to offload mobile data traffic and improve the quality of service for users. In the big-data era, the size of the content space is essentially infinite. Moreover, users with common features typically share similar content preference. In order to address these issues, we model the wireless caching problem as a contextual multi-armed bandit (CMAB) problem that considers the infinitely arms, and propose a Monte-Carlo tree search aided contextual upper confidence bound (MCTS-CUCB) algorithm, to make accurate content caching with low complexity. Specifically, we introduce a tree-based search method to analyze the content subspace instead of a single content, thereby reducing the computing load. In the search process, a cover tree is built in an incremental and asymmetric manner, which can reflect the users' content preference. Besides, contextualization allows to learn content preferences for groups of users having similar contexts, which significantly accelerates the learning process and improve the cache hit rate. Our simulation results on a real-world data set (MovieLens 1M Dataset) demonstrate that the proposed MCTS-CUCB algorithm is capable of achieving a considerable reduction in complexity compared with the existing related algorithms with a superior cache hit rate performance.
机译:在无线网络边缘缓存流行内容最近被揭示为卸载移动数据流量并提高用户服务质量的有希望的技术。在大数据时代,内容空间的大小基本上是无限的。此外,具有通用特征的用户通常共享类似的内容偏好。为了解决这些问题,我们将无线缓存问题模拟为考虑无限武器的上下文多武装强盗(CMAB)问题,并提出了一个Monte-Carlo树搜索辅助上下文的上置信绑定(MCTS-CUCB)算法,以低复杂度进行准确的内容缓存。具体地,我们介绍一种基于树的搜索方法来分析内容子空间而不是单个内容,从而减少计算负载。在搜索过程中,封面树以增量和不对称的方式构建,可以反映用户的内容偏好。此外,上下文化允许学习具有类似上下文的用户组的内容偏好,这显着加速了学习过程并提高缓存命中率。我们的仿真结果在实时数据集(MOVIELENS 1M数据集)上表明,与现有的相关算法相比,所提出的MCTS-CUCB算法能够实现复杂性的显着降低,具有卓越的高速缓存命中率性能。

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