Federated learning for performance prediction in multi-operator environments

Xi Lan, Jalil Taghia, Farnaz Moradi, M. Khoshkholghi, Edvin Listo Zec, Olof Mogren, Toktam Mahmoodi, Andreas Johnsson
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Abstract

Telecom vendors and operators deliver services with strict requirements on performance, over complex and sometimes partly shared network infrastructures. A key enabler for network and service management in such environments is knowledge sharing, and the use of data-driven models for performance prediction, forecasting, and troubleshooting. In this paper, we outline a multi-operator service metrics prediction framework using federated learning that allows privacy-preserved knowledge-sharing across operators for improved model performance, and also reduced requirements on data transfer within an operator network. Federated learning is compared against local and central learning strategies for multi-operator performance prediction, and it is shown to balance the requirements on data privacy, model performance, and the network overhead. Further, the paper provides insights on how data heterogeneity affects model performance, where the conclusion is that standard federated learning has certain robustness to data heterogeneity. Finally, we discuss the challenges related to training a federated learning model with a limited budget on the communication rounds. The evaluation is performed using a set of realistic publicly available data traces, that are adapted specifically for the purpose of studying multi-operator service performance prediction.
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用于多操作环境下性能预测的联邦学习
电信供应商和运营商在复杂且有时部分共享的网络基础设施上提供对性能有严格要求的服务。在这种环境中进行网络和服务管理的一个关键因素是知识共享,以及使用数据驱动模型进行性能预测、预测和故障排除。在本文中,我们概述了一个使用联邦学习的多运营商服务指标预测框架,该框架允许在运营商之间进行隐私保护知识共享,以提高模型性能,并降低对运营商网络内数据传输的要求。将联邦学习与本地和中央学习策略进行比较,以进行多操作员性能预测,并证明它可以平衡数据隐私、模型性能和网络开销方面的需求。此外,本文还提供了数据异构如何影响模型性能的见解,其中的结论是标准联邦学习对数据异构具有一定的鲁棒性。最后,我们讨论了在通信回合中训练预算有限的联邦学习模型所面临的挑战。评估是使用一组真实的公开可用数据跟踪来执行的,这些数据跟踪专门用于研究多运营商服务性能预测。
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