cs.AI updates on arXiv.org 09月17日
HLSMAC:多智能体强化学习战略评估新基准
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本文提出HLSMAC,一个基于《三十六计》战略的StarCraft II合作多智能体强化学习基准,旨在评估高级战略决策能力,并引入新型指标评估智能体表现。

arXiv:2509.12927v1 Announce Type: new Abstract: Benchmarks are crucial for assessing multi-agent reinforcement learning (MARL) algorithms. While StarCraft II-related environments have driven significant advances in MARL, existing benchmarks like SMAC focus primarily on micromanagement, limiting comprehensive evaluation of high-level strategic intelligence. To address this, we introduce HLSMAC, a new cooperative MARL benchmark with 12 carefully designed StarCraft II scenarios based on classical stratagems from the Thirty-Six Stratagems. Each scenario corresponds to a specific stratagem and is designed to challenge agents with diverse strategic elements, including tactical maneuvering, timing coordination, and deception, thereby opening up avenues for evaluating high-level strategic decision-making capabilities. We also propose novel metrics across multiple dimensions beyond conventional win rate, such as ability utilization and advancement efficiency, to assess agents' overall performance within the HLSMAC environment. We integrate state-of-the-art MARL algorithms and LLM-based agents with our benchmark and conduct comprehensive experiments. The results demonstrate that HLSMAC serves as a robust testbed for advancing multi-agent strategic decision-making.

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多智能体强化学习 战略评估 StarCraft II HLSMAC 三十六计
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