将真实数据纳入搜索游戏模拟的机制:应用于冬季卫生服务压力和预防政策。

Martin Chapman, Abigail G-Medhin, Kian Daneshi, Tom Bramwell, Stevo Durbaba, Vasa Curcin, Divya Parmar, Harriet Boulding, Laia Becares, Craig Morgan, Mariam Molokhia, Peter McBurney, Seeromanie Harding, Ingrid Wolfe, Mark Ashworth, Lucilla Poston
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引用次数: 0

摘要

虽然建模和模拟是探索复杂现象的强大技术,但如果不与合适的真实世界数据相结合,所获得的任何结果都可能需要大量的验证。我们在搜索游戏建模中考虑了这一问题,并建议使用人口和行为数据来配置某些模型参数。我们在实践中使用超过 15 万人的综合数据集来配置特定的搜索博弈模型,该模型捕捉了与冬季医疗服务压力相关的环境、人口、干预措施和个人行为,从而展示了这种整合。有了这些数据,我们就能更准确地探索服务压力干预措施的潜在影响,我们使用该模型的计算版本进行了 33000 次模拟。我们发现,在改善健康状况、减少健康不平等从而减轻医疗服务使用压力方面,政府建议是模拟中效果最好的干预措施。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mechanisms for Integrating Real Data into Search Game Simulations: An Application to Winter Health Service Pressures and Preventative Policies.

While modelling and simulation are powerful techniques for exploring complex phenomena, if they are not coupled with suitable real-world data any results obtained are likely to require extensive validation. We consider this problem in the context of search game modelling, and suggest that both demographic and behaviour data are used to configure certain model parameters. We show this integration in practice by using a combined dataset of over 150,000 individuals to configure a specific search game model that captures the environment, population, interventions and individual behaviours relating to winter health service pressures. The presence of this data enables us to more accurately explore the potential impact of service pressure interventions, which we do across 33,000 simulations using a computational version of the model. We find government advice to be the best-performing intervention in simulation, in respect of improved health, reduced health inequalities, and thus reduced pressure on health service utilisation.

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