AINeutralarXiv – CS AI · 15h ago6/10
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Adversarial Training for Robust Coverage Network under Worst-case Facility Losses
Researchers propose a Dual-Agent Deep Reinforcement Learning framework to solve the Maximal Covering Location-Interdiction Problem, a computationally complex bi-level optimization challenge critical for resilient infrastructure planning. The adversarial training approach, where location and interdiction agents compete, achieves superior computational efficiency while maintaining competitive solution quality across synthetic and real-world datasets.