1. Mastering Complex Coordination through Attention-based Dynamic Graph
- Author
-
Zhou, Guangchong, Xu, Zhiwei, Zhang, Zeren, and Fan, Guoliang
- Subjects
Computer Science - Multiagent Systems ,Computer Science - Artificial Intelligence - Abstract
The coordination between agents in multi-agent systems has become a popular topic in many fields. To catch the inner relationship between agents, the graph structure is combined with existing methods and improves the results. But in large-scale tasks with numerous agents, an overly complex graph would lead to a boost in computational cost and a decline in performance. Here we present DAGMIX, a novel graph-based value factorization method. Instead of a complete graph, DAGMIX generates a dynamic graph at each time step during training, on which it realizes a more interpretable and effective combining process through the attention mechanism. Experiments show that DAGMIX significantly outperforms previous SOTA methods in large-scale scenarios, as well as achieving promising results on other tasks.
- Published
- 2023