基于贝叶斯吸引子模型的非参数动态切片选择决策

Tatsuya Otoshi, S. Arakawa, M. Murata, T. Hosomi
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引用次数: 2

摘要

在5G中,网络被划分成不同的切片,以提供不同特性的通信,如低延迟可靠通信(URRLC)、多连接通信(MTC)和高速大容量通信(eMBB),以满足不同的应用需求。虽然网络片的选择通常是静态的,但在实践中,根据应用情况需要动态选择片。但是,存在一些问题,例如片更改本身会改变应用程序的情况,以及与片更改相关的延迟。在本文中,我们通过识别粗糙情况以及识别的情况与切片之间的映射来实现动态切片选择。贝叶斯吸引子模型(BAM)用于识别以实现一致性识别,并扩展到Dirichlet过程混合模型(DPMM)以实现自动吸引子构造。情境和切片之间的映射也可以通过反馈自动学习。作为动态切片选择的一个应用,我们还展示了基于视频流情况的切片选择。通过数值算例表明,该方法可以在减少切片变化的同时保持较高的视频流质量。
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Non-parametric Decision-Making by Bayesian Attractor Model for Dynamic Slice Selection
In 5G, the network is divided into slices to provide communications with different characteristics, such as low latency and reliable communications (URRLC), multiple connections (MTC), and high speed and high capacity communications (eMBB), for different applications. Although the selection of network slices is often static, in practice, dynamic slice selection is required depending on the application situation. However, there are issues such as the slice change itself changing the application situation and the delay associated with the slice change. In this paper, we realize dynamic slice selection by recognizing the rough situation and the mapping between the recognized situation and the slice. The Bayesian Attractor Model (BAM) is used for recognition to achieve consistent recognition and is extended to the Dirichlet Process Mixture Model (DPMM) to achieve automatic attractor construction. The mapping between situations and slices is also automatically learned by using feedback. As an application of dynamic slice selection, we also show slice selection based on the video streaming situation. Through numerical examples, we show that our method can keep the quality of video streaming high while reducing slice changes.
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