Agent-based models of disease transmission involve stochastic rules that specify how a number of individuals would infect one another, recover or be removed from the population. Common yet stringent assumptions stipulate interchangeability of agents and that all pairwise contact are equally likely. Under these assumptions, the population can be summarized by counting the number of susceptible and infected individuals, which greatly facilitates statistical inference. We consider the task of inference without such simplifying assumptions, in which case, the population cannot be summarized by low-dimensional counts. We design improved particle filters, where each particle corresponds to a specific configuration of the population of agents, that take either the next or all future observations into account when proposing population configurations. Using simulated data sets, we illustrate that orders of magnitude improvements are possible over bootstrap particle filters. We also provide theoretical support for the approximations employed to make the algorithms practical.
翻译:根据这些假设,可以计算易感染者和受感染者的人数,从而大大便利统计推理。我们认为,在没有这种简化假设的情况下,推论的任务就是:人口无法以低维计来总结。我们设计了改进的粒子过滤器,每个粒子与物剂的具体配置相对应,在提出人口配置时考虑下一个或今后所有观测结果。我们使用模拟数据集说明,在靴状粒子过滤器上,可以进行数量级改进。我们还从理论上支持使算法实用的近似法。