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Dynamic Sight Range Selection in Multi-Agent Reinforcement Learning

19 May 2025
Wei-Chen Liao
Ti-Rong Wu
I-Chen Wu
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Abstract

Multi-agent reinforcement Learning (MARL) is often challenged by the sight range dilemma, where agents either receive insufficient or excessive information from their environment. In this paper, we propose a novel method, called Dynamic Sight Range Selection (DSR), to address this issue. DSR utilizes an Upper Confidence Bound (UCB) algorithm and dynamically adjusts the sight range during training. Experiment results show several advantages of using DSR. First, we demonstrate using DSR achieves better performance in three common MARL environments, including Level-Based Foraging (LBF), Multi-Robot Warehouse (RWARE), and StarCraft Multi-Agent Challenge (SMAC). Second, our results show that DSR consistently improves performance across multiple MARL algorithms, including QMIX and MAPPO. Third, DSR offers suitable sight ranges for different training steps, thereby accelerating the training process. Finally, DSR provides additional interpretability by indicating the optimal sight range used during training. Unlike existing methods that rely on global information or communication mechanisms, our approach operates solely based on the individual sight ranges of agents. This approach offers a practical and efficient solution to the sight range dilemma, making it broadly applicable to real-world complex environments.

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@article{liao2025_2505.12811,
  title={ Dynamic Sight Range Selection in Multi-Agent Reinforcement Learning },
  author={ Wei-Chen Liao and Ti-Rong Wu and I-Chen Wu },
  journal={arXiv preprint arXiv:2505.12811},
  year={ 2025 }
}
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