优化医院门诊服务:逆向归纳和 Q-learning 技术的比较研究

Shilin Zhang
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引用次数: 0

摘要

本研究探讨了在大容量医院中优化门诊服务的关键问题,重点是制定具有成本效益的管理策略。本研究利用门诊服务模拟模型,结合国民健康服务系统(NHS)的真实数据,解决医院管理中的实际难题。研究方法包括应用后向归纳法、Q-learning 和深度 Q-Network (DQN) 算法来制定解决方案。研究结果表明,在假定条件下,逆向归纳法能有效解决较简单的问题。相比之下,Q-learning 提供了一种可行的方法,而 DQN 则在解决更复杂、更现实的问题时表现出更优越的性能。本研究得出的结论是,每种算法在各自的运行环境中都表现出独特的优势。虽然由于环境设置的差异,基于输出分析的模型之间的直接比较并不可行,但很明显,所有三种算法都对解决门诊服务管理中的目标问题做出了重大贡献。这项研究不仅为医院门诊服务优化提供了有价值的见解,还为进一步探索先进计算技术在医疗管理中的应用开辟了道路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimizing hospital outpatient services: A comparative study of backward induction and Q-learning techniques
This study addresses the critical issue of optimizing outpatient services in high-capacity hospitals, focusing on developing cost-effective management strategies. Utilizing a simulated model of outpatient services, this research incorporates real data from the National Health Service (NHS) to tackle practical challenges in hospital management. The methodology encompasses the application of backward induction, Q-learning, and Deep Q-Network (DQN) algorithms to formulate solutions. The findings indicate that backward induction effectively resolves simpler scenarios within the assumed conditions. In contrast, Q-learning offers a viable approach, with DQN demonstrating superior performance in addressing more complex, realistic problems. The conclusion drawn from this study is that each algorithm exhibits unique strengths in its respective operational environment. While direct comparison between the models based on output analysis is not feasible due to the variation in environmental settings, it is evident that all three algorithms significantly contribute to resolving the targeted issues in outpatient service management. This research not only provides valuable insights into hospital outpatient service optimization but also opens avenues for further exploration in the application of advanced computational techniques in healthcare management.
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