论文标题
基于社交网络的距离策略,使锁定后世界中的covid 19曲线平坦
Social network-based distancing strategies to flatten the COVID 19 curve in a post-lockdown world
论文作者
论文摘要
广泛引入了社会距离和隔离,以应对19日大流行。但是,由于不利的社会,心理和经济后果,完全或几乎完整的锁定局面,更适度的减少接触政策变得可取。采用社交网络方法,我们评估了旨在“保持曲线平坦”并在锁上后世界中辅助合规性的三种有针对性的距离策略的有效性。这些将相互作用限制在一些重复的联系中,寻求跨接触的相似性,并通过三合会策略加强社区。我们模拟了随机感染曲线,这些曲线结合了感染模型,理想类型社交网络模型和统计关系事件模型的核心元素。我们证明,战略性降低接触可以强烈提高社会疏远措施的效率,从而引入了允许一些社会接触的可能性,同时保持风险较低。这种方法为政策制定者提供了细微的见解,以使社会疏远有效地减轻社会隔离的负面后果。
Social distancing and isolation have been introduced widely to counter the COVID-19 pandemic. However, more moderate contact reduction policies become desirable owing to adverse social, psychological, and economic consequences of a complete or near-complete lockdown. Adopting a social network approach, we evaluate the effectiveness of three targeted distancing strategies designed to 'keep the curve flat' and aid compliance in a post-lockdown world. These are limiting interaction to a few repeated contacts, seeking similarity across contacts, and strengthening communities via triadic strategies. We simulate stochastic infection curves that incorporate core elements from infection models, ideal-type social network models, and statistical relational event models. We demonstrate that strategic reduction of contact can strongly increase the efficiency of social distancing measures, introducing the possibility of allowing some social contact while keeping risks low. This approach provides nuanced insights to policy makers for effective social distancing that can mitigate negative consequences of social isolation.