Published December 7, 2021 | Version v1

Privacy Preserving Federated RSRP Estimation for Future Mobile Networks

  • 1. Ericsson Research, Turkey
  • 2. Ericsson Research, Sweden

Description

Leveraging location information for machine learning applications in mobile networks is challenging due to the distributed nature of the data and privacy concerns. Federated Learning (FL) helps to tackle these issues and is a big step towards enabling privacy-aware distributed model training; however still prone to sophisticated privacy attacks such as membership inference. In this paper, we implement an FL approach to estimate Reference Signal Received Power (RSRP) values using geographical location information of the user equipment. We propose a privacy-preserving mechanism using differential privacy to protect against privacy attacks and demonstrate the impacts and the privacy-utility trade-off via privacy accounting measures.

Notes

HexaX_WP4 This work was supported by The Scientific and Technological Research Council of Turkey (TUBITAK) through the 1515 Frontier Research and Development Laboratories Support Program under Project 5169902.

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Additional details

Funding

European Commission
Hexa-X - A flagship for B5G/6G vision and intelligent fabric of technology enablers connecting human, physical, and digital worlds 101015956