Global problems, such as pandemics and climate change, require rapid international coordination and diffusion of policy. These phenomena are rare however, with one notable example being the international policy response to the COVID-19 pandemic in early 2020. Here we build an agent-based model of this rapid policy diffusion, where countries constitute the agents and with the principal mechanism for diffusion being peer mimicry. Since it is challenging to predict accurately the policy diffusion curve, we utilize data assimilation, that is an ``on-line'' feed of data to constrain the model against observations. The specific data assimilation algorithm we apply is a particle filter because of its convenient implementation, its ability to handle categorical variables and because the model is not overly computationally expensive, hence a more efficient algorithm is not required. We find that the model alone is able to predict the policy diffusion relatively well with an ensemble of at least 100 simulation runs. The particle filter however improves the fit to the data, reliably so from 500 runs upwards, and increasing filtering frequency results in improved prediction.
翻译:流行病和气候变化等全球性问题要求迅速进行国际协调,并传播政策。然而,这些现象很少见,其中的一个显著例子是2020年初对COVID-19大流行的国际政策反应。我们在这里建立了一个基于代理的快速政策传播模式,即国家构成代理方,而传播的主要机制是同侪模拟。由于准确预测政策传播曲线具有挑战性,我们使用数据同化,即“在线”数据,以对照观察限制模型。我们应用的具体数据同化算法是一个粒子过滤器,因为它的实施方便,它能够处理绝对变量,而且模型不过于计算昂贵,因此不需要一种效率更高的算法。我们发现,单靠模型就能预测政策传播相对良好,同时至少进行100次模拟运行。但粒子过滤器从500次运行向上可靠地改进数据,并增加改进预测的过滤频率结果。