Federated Learning in Mobile Networks: A Comprehensive Case Study on Traffic Forecasting

IF 3 3区 计算机科学 Q2 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE
Nikolaos Pavlidis;Vasileios Perifanis;Selim F. Yilmaz;Francesc Wilhelmi;Marco Miozzo;Pavlos S. Efraimidis;Remous-Aris Koutsiamanis;Pavol Mulinka;Paolo Dini
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引用次数: 0

Abstract

The increasing demand for efficient resource allocation in mobile networks has catalyzed the exploration of innovative solutions that could enhance the task of real-time cellular traffic prediction. Under these circumstances, federated learning (FL) stands out as a distributed and privacy-preserving solution to foster collaboration among different sites, thus enabling responsive near-the-edge solutions. In this paper, we comprehensively study the potential benefits of FL in telecommunications through a case study on federated traffic forecasting using real-world data from base stations (BSs) in Barcelona (Spain). Our study encompasses relevant aspects within the federated experience, including model aggregation techniques, outlier management, the impact of individual clients, personalized learning, and the integration of exogenous sources of data. The performed evaluation is based on both prediction accuracy and sustainability, thus showcasing the environmental impact of employed FL algorithms in various settings. The findings from our study highlight FL as a promising and robust solution for mobile traffic prediction, emphasizing its twin merits as a privacy-conscious and environmentally sustainable approach, while also demonstrating its capability to overcome data heterogeneity and ensure high-quality predictions, marking a significant stride towards its integration in mobile traffic management systems.
移动网络中的联邦学习:流量预测的综合案例研究
移动网络中对有效资源分配的需求日益增长,这促使人们探索创新的解决方案,以增强实时蜂窝流量预测的任务。在这种情况下,联邦学习(FL)作为一种分布式和保护隐私的解决方案脱颖而出,以促进不同站点之间的协作,从而实现响应性的近边缘解决方案。在本文中,我们通过使用来自巴塞罗那(西班牙)基站(BSs)的真实世界数据进行联邦流量预测的案例研究,全面研究了FL在电信领域的潜在优势。我们的研究涵盖了联邦经验中的相关方面,包括模型聚合技术、离群值管理、个人客户的影响、个性化学习和外生数据源的集成。所进行的评估基于预测准确性和可持续性,从而展示了在各种设置中使用的FL算法对环境的影响。我们的研究结果强调了FL作为移动交通预测的一种有前途和强大的解决方案,强调了其作为隐私意识和环境可持续方法的双重优点,同时也展示了其克服数据异质性和确保高质量预测的能力,标志着其在移动交通管理系统集成方面迈出了重要的一步。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
IEEE Transactions on Sustainable Computing
IEEE Transactions on Sustainable Computing Mathematics-Control and Optimization
CiteScore
7.70
自引率
2.60%
发文量
54
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