John Pesavento, A. Chen, Rayan Yu, Joon-Seok Kim, H. Kavak, T. Anderson, Andreas Züfle
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引用次数: 16
摘要
基于主体的模型(ABM)在指导关键决策和支持制定有效政策以提高城市抵御能力和应对COVID-19大流行方面发挥着突出作用。然而,许多ABMs缺乏人类活动的现实表现,这是导致身体相互作用和随后疾病传播的关键过程。因此,我们建议将潜在狄利克雷分配(Latent Dirichlet Allocation, LDA)这一主题建模技术应用于步行交通数据,以建立一个模拟COVID-19传播的ABM中人类流动性的现实模型。在我们的新方法中,LDA将poi视为“单词”,将agent home census block groups (CBG)视为“文档”,以提取在CBG访问中经常一起出现的poi的“主题”。这些主题使我们能够基于智能体主场CBG的LDA主题分布来模拟智能体的移动性。我们比较了基于LDA的移动性模型和竞争对手的方法,包括一个朴素的移动性模型,该模型假设对poi的访问是随机的。我们发现,单纯的流动性模型根本无法促进COVID-19的传播。使用LDA知情流动性模型,我们模拟了COVID-19的传播,并测试了主题数量、各种参数和公共卫生干预措施变化的影响。通过检查一段时间内的模拟病例数,我们发现主题的数量确实会影响疾病传播动态,但仅在爆发时间方面。需要进一步分析模拟结果,以更好地了解主题对模拟COVID-19传播的影响。这项研究有助于加强疾病传播的ABMs中人类活动的表征。
Data-driven mobility models for COVID-19 simulation
Agent-based models (ABM) play a prominent role in guiding critical decision-making and supporting the development of effective policies for better urban resilience and response to the COVID-19 pandemic. However, many ABMs lack realistic representations of human mobility, a key process that leads to physical interaction and subsequent spread of disease. Therefore, we propose the application of Latent Dirichlet Allocation (LDA), a topic modeling technique, to foot-traffic data to develop a realistic model of human mobility in an ABM that simulates the spread of COVID-19. In our novel approach, LDA treats POIs as "words" and agent home census block groups (CBGs) as "documents" to extract "topics" of POIs that frequently appear together in CBG visits. These topics allow us to simulate agent mobility based on the LDA topic distribution of their home CBG. We compare the LDA based mobility model with competitor approaches including a naive mobility model that assumes visits to POIs are random. We find that the naive mobility model is unable to facilitate the spread of COVID-19 at all. Using the LDA informed mobility model, we simulate the spread of COVID-19 and test the effect of changes to the number of topics, various parameters, and public health interventions. By examining the simulated number of cases over time, we find that the number of topics does indeed impact disease spread dynamics, but only in terms of the outbreak's timing. Further analysis of simulation results is needed to better understand the impact of topics on simulated COVID-19 spread. This study contributes to strengthening human mobility representations in ABMs of disease spread.