Machine Learning for Spectrum Sharing: A Survey
Francisco R. V. Guimar\~aes, Jos\'e Mairton B. da Silva Jr., Charles, Casimiro Cavalcante, Gabor Fodor, Mats Bengtsson, Carlo Fischione

TL;DR
This survey reviews how machine learning techniques are increasingly used to address complex spectrum sharing challenges in next-generation wireless systems like 5G and 6G, replacing traditional model-based methods.
Contribution
It provides a comprehensive overview of machine learning applications in spectrum sharing, categorizing methods and highlighting future research directions.
Findings
Machine learning methods are effectively applied to spectrum sensing and allocation.
Deep learning models improve spectrum management efficiency.
Open research questions include real-time implementation and robustness.
Abstract
The 5th generation (5G) of wireless systems is being deployed with the aim to provide many sets of wireless communication services, such as low data rates for a massive amount of devices, broadband, low latency, and industrial wireless access. Such an aim is even more complex in the next generation wireless systems (6G) where wireless connectivity is expected to serve any connected intelligent unit, such as software robots and humans interacting in the metaverse, autonomous vehicles, drones, trains, or smart sensors monitoring cities, buildings, and the environment. Because of the wireless devices will be orders of magnitude denser than in 5G cellular systems, and because of their complex quality of service requirements, the access to the wireless spectrum will have to be appropriately shared to avoid congestion, poor quality of service, or unsatisfactory communication delays. Spectrum…
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Taxonomy
Methodstravel james
