在多代理合作系统中通过基于动态有向图的通信架起训练与执行的桥梁

Zhuohui Zhang, Bin He, Bin Cheng, Gang Li
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摘要

多代理系统必须学会交流并理解代理之间的互动,才能在部分观察任务中实现合作目标。然而,现有方法缺乏动态有向交流机制,而且依赖于全局状态,从而削弱了交流在集中训练中的作用。因此,我们提出了一种新颖的多代理强化学习(MARL)算法--基于变换器的图粗化网络(TGCNet)。TGCNet 学习动态有向图的拓扑结构来表示通信策略,并整合图粗化网络以在训练过程中近似表示全局状态。在多个合作 MARL 基准上进行的实验表明,与流行的 MARL 算法相比,TGCNet 具有最先进的性能。进一步的研究验证了我们的动态有向图通信机制和图粗化网络的有效性。
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Bridging Training and Execution via Dynamic Directed Graph-Based Communication in Cooperative Multi-Agent Systems
Multi-agent systems must learn to communicate and understand interactions between agents to achieve cooperative goals in partially observed tasks. However, existing approaches lack a dynamic directed communication mechanism and rely on global states, thus diminishing the role of communication in centralized training. Thus, we propose the transformer-based graph coarsening network (TGCNet), a novel multi-agent reinforcement learning (MARL) algorithm. TGCNet learns the topological structure of a dynamic directed graph to represent the communication policy and integrates graph coarsening networks to approximate the representation of global state during training. It also utilizes the transformer decoder for feature extraction during execution. Experiments on multiple cooperative MARL benchmarks demonstrate state-of-the-art performance compared to popular MARL algorithms. Further ablation studies validate the effectiveness of our dynamic directed graph communication mechanism and graph coarsening networks.
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