BARD-MARL: Byzantine-Agent Detection for Learned Communication in Multi-Agent Reinforcement Learning (opens in new tab)
Learned communication improves coordination in cooperative multi-agent reinforcement learning, but it also creates a trust problem: a trained policy may route information through agents that have become faulty or adversarial. This paper studies Byzantine-agent detection for learned-communication MARL in adaptive traffic signal control. We propose BARD-MARL, a post-hoc diagnostic layer on top of BayesG, which is used as an attributed communicat...
Read the original article