Adapting under Fire: Multi-Agent Reinforcement Learning for Adversarial Drift in Network Security
Evolving attacks are a critical challenge for the long-term success of Network Intrusion Detection Systems NIDS. The rise of these changing patterns has exposed the limitations of traditional network security methods. While signature-based methods are used to detect different types of attacks, th...