Training RL Agents for Multi-Objective Network Defense Tasks
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Bibliography:3 Pages
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Appendix:10 Pages
Abstract
Open-ended learning (OEL) -- which emphasizes training agents that achieve broad capability over narrow competency -- is emerging as a paradigm to develop artificial intelligence (AI) agents to achieve robustness and generalization. However, despite promising results that demonstrate the benefits of OEL, applying OEL to develop autonomous agents for real-world cybersecurity applications remains a challenge.
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