Epidemic spreading is well understood when a disease propagates around a contact graph. In a stochastic susceptible-infected-susceptible setting, spectral conditions characterise whether the disease vanishes. However, modelling human interactions using a graph is a simplification which only considers pairwise relationships. This does not fully represent the more realistic case where people meet in groups. Hyperedges can be used to record such group interactions, yielding more faithful and flexible models, allowing for the rate of infection of a node to vary as a nonlinear function of the number of infectious neighbors. We discuss different types of contagion models in this hypergraph setting, and derive spectral conditions that characterize whether the disease vanishes. We study both the exact individual-level stochastic model and a deterministic mean field ODE approximation. Numerical simulations are provided to illustrate the analysis. We also interpret our results and show how the hypergraph model allows us to distinguish between contributions to infectiousness that (a) are inherent in the nature of the pathogen and (b) arise from behavioural choices (such as social distancing, increased hygiene and use of masks). This raises the possibility of more accurately quantifying the effect of interventions that are designed to contain the spread of a virus.
翻译:当疾病在接触图周围传播时,人们可以清楚地了解流行病的蔓延。在一种可感知的易感感染环境中,光谱条件特征是该疾病是否消失。然而,用图表模拟人类相互作用是一种简化,只考虑对等关系。这不完全代表人们群体相聚的更现实的情况。可以使用超格来记录这种群体互动,产生更加忠实和灵活的模型,允许节点的感染率作为传染性邻居数目的非线性函数而变化。我们在这个高射线设置中讨论不同类型的传染模型,并得出疾病是否消失的特征的光谱条件。我们既研究精确的个人级别随机分析模型,又研究一种确定性的平均领域ODE近似值。提供数字模拟来说明分析。我们还解释我们的结果,并表明高光谱模型如何区分对传染性的贡献,即(a)病原体性质所固有的非线性功能和(b)产生于行为选择(例如社会偏移、增加卫生和使用防毒面具),从而可以更准确地量化病毒的效果。