2023
DOI: 10.52953/pfyz9165
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Federated learning for performance prediction in multi-operator environments

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… Show more

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Cited by 2 publications
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References 18 publications
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