Federated Analytics for 6G Networks: Applications, Challenges, and Opportunities
Extensive research is underway to meet the hyper-connectivity demands of 6G networks, driven by applications like XR/VR and holographic communications, which generate substantial data requiring network-based processing, transmission, and analysis. However, adhering to diverse data privacy and securi...
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Zusammenfassung: | Extensive research is underway to meet the hyper-connectivity demands of 6G
networks, driven by applications like XR/VR and holographic communications,
which generate substantial data requiring network-based processing,
transmission, and analysis. However, adhering to diverse data privacy and
security policies in the anticipated multi-domain, multi-tenancy scenarios of
6G presents a significant challenge. Federated Analytics (FA) emerges as a
promising distributed computing paradigm, enabling collaborative data value
generation while preserving privacy and reducing communication overhead. FA
applies big data principles to manage and secure distributed heterogeneous
networks, improving performance, reliability, visibility, and security without
compromising data confidentiality. This paper provides a comprehensive overview
of potential FA applications, domains, and types in 6G networks, elucidating
analysis methods, techniques, and queries. It explores complementary approaches
to enhance privacy and security in 6G networks alongside FA and discusses the
challenges and prerequisites for successful FA implementation. Additionally,
distinctions between FA and Federated Learning are drawn, highlighting their
synergistic potential through a network orchestration scenario. |
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DOI: | 10.48550/arxiv.2401.03878 |