AI RESEARCH
BehaviorGuard: Online Backdoor Defense for Deep Reinforcement Learning
arXiv CS.AI
•
ArXi:2605.05977v1 Announce Type: new Backdoor attacks pose a serious threat to deep reinforcement learning (DRL). Current defenses typically rely on reward anomalies to reverse-engineer triggers and model finetuning to remove backdoors. However, complex trigger patterns undermine their robustness, and fine-tuning entails high costs, limiting practical utility. Therefore, we shift defense concerns to trigger-agnostic backdoor output behaviors and propose BehaviorGuard, an online behavior-based backdoor detection and mitigation framework for