cs.AI updates on arXiv.org 09月25日
ET-MAPG:事件触发多智能体强化学习新框架
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本文提出了一种名为ET-MAPG的事件触发多智能体强化学习框架,通过联合学习智能体的控制策略和事件触发策略,有效降低了计算负载和通信开销,实验表明其性能与现有方法相当。

arXiv:2509.20338v1 Announce Type: cross Abstract: Conventional multi-agent reinforcement learning (MARL) methods rely on time-triggered execution, where agents sample and communicate actions at fixed intervals. This approach is often computationally expensive and communication-intensive. To address this limitation, we propose ET-MAPG (Event-Triggered Multi-Agent Policy Gradient reinforcement learning), a framework that jointly learns an agent's control policy and its event-triggering policy. Unlike prior work that decouples these mechanisms, ET-MAPG integrates them into a unified learning process, enabling agents to learn not only what action to take but also when to execute it. For scenarios with inter-agent communication, we introduce AET-MAPG, an attention-based variant that leverages a self-attention mechanism to learn selective communication patterns. AET-MAPG empowers agents to determine not only when to trigger an action but also with whom to communicate and what information to exchange, thereby optimizing coordination. Both methods can be integrated with any policy gradient MARL algorithm. Extensive experiments across diverse MARL benchmarks demonstrate that our approaches achieve performance comparable to state-of-the-art, time-triggered baselines while significantly reducing both computational load and communication overhead.

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事件触发 多智能体强化学习 ET-MAPG 通信优化 性能提升
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