DISTINQT: A Distributed Privacy Aware Learning Framework for QoS Prediction for Future Mobile and Wireless Networks
Nikolaos Koursioumpas, Lina Magoula, Ioannis Stavrakakis, Nancy, Alonistioti, M. A. Gutierrez-Estevez, Ramin Khalili

TL;DR
DISTINQT is a novel distributed learning framework that predicts QoS in future wireless networks, preserving data privacy and achieving high accuracy comparable to centralized methods.
Contribution
It introduces a multi-headed, privacy-aware distributed learning approach supporting heterogeneous nodes for QoS prediction in 6G networks.
Findings
Achieves up to 65% reduction in prediction error compared to state-of-the-art baselines.
Maintains performance equivalent to centralized models while enhancing privacy.
Supports diverse data types and models across network nodes.
Abstract
Beyond 5G and 6G networks are expected to support new and challenging use cases and applications that depend on a certain level of Quality of Service (QoS) to operate smoothly. Predicting the QoS in a timely manner is of high importance, especially for safety-critical applications as in the case of vehicular communications. Although until recent years the QoS prediction has been carried out by centralized Artificial Intelligence (AI) solutions, a number of privacy, computational, and operational concerns have emerged. Alternative solutions have surfaced (e.g. Split Learning, Federated Learning), distributing AI tasks of reduced complexity across nodes, while preserving the privacy of the data. However, new challenges rise when it comes to scalable distributed learning approaches, taking into account the heterogeneous nature of future wireless networks. The current work proposes…
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Taxonomy
TopicsAdvanced MIMO Systems Optimization · Millimeter-Wave Propagation and Modeling · Privacy-Preserving Technologies in Data
Methodstravel james
