2023
DOI: 10.3389/fcomp.2023.1156064
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Reinforcement learning for communication load balancing: approaches and challenges

Di Wu,
Jimmy Li,
Amal Ferini
et al.

Abstract: The amount of cellular communication network traffic has increased dramatically in recent years, and this increase has led to a demand for enhanced network performance. Communication load balancing aims to balance the load across available network resources and thus improve the quality of service for network users. Most existing load balancing algorithms are manually designed and tuned rule-based methods where near-optimality is almost impossible to achieve. Furthermore, rule-based methods are difficult to ada… Show more

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