Empowering Epidemic Response: The Role of Reinforcement Learning in Infectious Disease Control
arXiv cs.AI / 3/30/2026
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Key Points
- The article reviews how reinforcement learning (RL) has been applied to infectious disease control to optimize intervention strategies for outbreak response.
- It highlights RL’s suitability for dynamic, constraint-driven environments and notes a growing body of work focused on COVID-19 and other infectious diseases.
- The review specifically covers RL-driven decision areas such as resource allocation, trade-offs between health outcomes and economic/social impacts, and combining multiple interventions.
- It also discusses RL approaches for inter-regional coordinated control to manage spread across geographic areas.
- The paper concludes by outlining open problems and promising directions for future RL research in public health intervention optimization.
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