2023
DOI: 10.48550/arxiv.2302.12899
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Multi-Agent Reinforcement Learning with Common Policy for Antenna Tilt Optimization

Abstract: This paper proposes a method for wireless network optimization applicable to tuning cell parameters that impact the performance of the adjusted cell and the surrounding neighboring cells. The method relies on multiple reinforcement learning agents that share a common policy and include information from neighboring cells in the state and reward. In order not to impair network performance during the first steps of learning, agents are pre-trained during an earlier phase of offline learning, in which an initial p… Show more

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