Miikkulainen Risto, Francon Olivier, Meyerson Elliot, Qiu Xin, Sargent Darren, Canzani Elisa, Hodjat Babak
Evolutionary AI Research GroupCognizant Technology Solutions San Francisco CA 94111 USA.
Department of Computer SciencesUniversity of Texas at Austin Austin TX 78712 USA.
IEEE Trans Evol Comput. 2021 Mar 2;25(2):386-401. doi: 10.1109/TEVC.2021.3063217. eCollection 2021 Apr.
Several models have been developed to predict how the COVID-19 pandemic spreads, and how it could be contained with nonpharmaceutical interventions, such as social distancing restrictions and school and business closures. This article demonstrates how evolutionary AI can be used to facilitate the next step, i.e., determining most effective intervention strategies automatically. Through evolutionary surrogate-assisted prescription, it is possible to generate a large number of candidate strategies and evaluate them with predictive models. In principle, strategies can be customized for different countries and locales, and balance the need to contain the pandemic and the need to minimize their economic impact. Early experiments suggest that workplace and school restrictions are the most important and need to be designed carefully. They also demonstrate that results of lifting restrictions can be unreliable, and suggest creative ways in which restrictions can be implemented softly, e.g., by alternating them over time. As more data becomes available, the approach can be increasingly useful in dealing with COVID-19 as well as possible future pandemics.
已经开发了几种模型来预测新冠疫情如何传播,以及如何通过社交距离限制、学校和企业关闭等非药物干预措施来控制疫情。本文展示了进化人工智能如何用于推动下一步工作,即自动确定最有效的干预策略。通过进化代理辅助处方,可以生成大量候选策略,并使用预测模型对其进行评估。原则上,可以针对不同国家和地区定制策略,平衡控制疫情的需求和尽量减少其经济影响的需求。早期实验表明,工作场所和学校限制最为重要,需要精心设计。实验还表明,解除限制的结果可能不可靠,并提出了可以温和实施限制的创新方法,例如随时间交替实施。随着更多数据可用,这种方法在应对新冠疫情以及未来可能出现的大流行方面将越来越有用。