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On Predicting Service-oriented Network Slices Performances in 5G: A Federated Learning Approach

机译:在5G中预测面向服务的网络切片性能:联合学习方法

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To achieve the vision of Zero Touch Management (ZSM) of network slices in 5G, it is important to monitor and predict the performances of the running network slices, or their Key Performance Indicator (KPI). KPIs are usually monitored, but also with the advance of Machine Learning (ML) techniques are predicted, aiming at proactively reacting to any service degradation of running network slices. While network- and computation-oriented KPIs can be easily monitored and predicted, service-oriented KPIs are difficult to obtain due to the privacy issue, as they disclose critical information on the performance of services. To tackle this issue, in this paper, we propose to use a new ML technique, known as Federated Learning (FL), which consists of keeping raw data where it is generated, while sending only users' local trained models to the centralized entity for aggregation. Hence, making FL as an adequate candidate to be used for predicting slices' service-oriented KPIs.
机译:为了实现5G的网络切片零触摸管理(ZSM)的愿景,重要的是监控和预测运行网络切片的性能,或其关键性能指标(KPI)。通常监控KPI,但也与机器学习的前进(ML)技术进行了预测,旨在积极地反应运行网络切片的任何服务劣化。虽然可以容易地监控和预测到网络和计算的KPI,但由于隐私问题,因此难以获得服务的KPI,因为它们披露了关于服务性能的关键信息。为了解决这个问题,在本文中,我们建议使用新的ML技术,称为联合学习(FL),这包括保持生成的原始数据,同时仅向集中实体发送用户本地训练模型。聚合。因此,制造FL作为用于预测切片的服务导向的KPI的足够候选者。

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