Federated Multi Agent Deep Learning and Neural Networks for Advanced Distributed Sensing in Wireless Networks
Nadine Muller, Stefano DeRosa, Su Zhang, Chun Lee Huan

TL;DR
This survey reviews recent advances in federated multi-agent deep learning for distributed sensing and communication in wireless networks, emphasizing 2021-2025 research and future directions for 6G systems.
Contribution
It provides a comprehensive taxonomy, comparative analysis, and identifies open challenges in MADL for wireless sensing and communication.
Findings
Summarizes recent algorithms and architectures for MADL in wireless networks.
Analyzes trade-offs in latency, spectral efficiency, and privacy.
Highlights open issues like scalability and security.
Abstract
Multi-agent deep learning (MADL), including multi-agent deep reinforcement learning (MADRL), distributed/federated training, and graph-structured neural networks, is becoming a unifying framework for decision-making and inference in wireless systems where sensing, communication, and computing are tightly coupled. Recent 5G-Advanced and 6G visions strengthen this coupling through integrated sensing and communication, edge intelligence, open programmable RAN, and non-terrestrial/UAV networking, which create decentralized, partially observed, time-varying, and resource-constrained control problems. This survey synthesizes the state of the art, with emphasis on 2021-2025 research, on MADL for distributed sensing and wireless communications. We present a task-driven taxonomy across (i) learning formulations (Markov games, Dec-POMDPs, CTDE), (ii) neural architectures (GNN-based radio resource…
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Taxonomy
TopicsIoT and Edge/Fog Computing · UAV Applications and Optimization · Privacy-Preserving Technologies in Data
