论文标题
在社会联系世界中作为网络人口游戏的社交遥不可及
Social Distancing as a Network Population Game in a Socially Connected World
论文作者
论文摘要
尽管在当今持续联系的世界中,社会生活被认为是人类生活中必不可少的一部分,但自冠状病毒大流行以来,社会疏远最近引起了人们对其重要性的广泛关注。实际上,在孤立物种中,社会疏远一直在自然界中实行,并被人类作为阻止或减慢传染病传播的有效方法。在这里,我们考虑了一个社会疏远的问题,即当一个社交网站网络的世界中,决定访问或留在某些站点,同时避免或关闭其他一些网站,以便可以最大程度地减少整个网络的社交联系。我们将这个问题建模为网络人口游戏,每个人都试图找到一些网站访问或留下来,以便他/她可以最大程度地减少他/她的社交联系。最后,当游戏达到平衡时,每一个都可以找到最佳的策略。我们表明,可以通过选择一组形成所谓最大R型子网的社交场所来获得一大批平衡策略。后者包含许多经过良好研究的网络类型,这些类型易于识别或构造,并且可以完全断开连接(r = 0),以进行最严格的隔离,或者允许一定程度的连接性(带有r> 0)以进行更灵活的距离。我们得出了这些策略的均衡条件,并分析了它们对不同类型的R-Regormar子网的刚性和柔韧性。当将不同的接触值分配给不同的网络站点时,我们还将模型扩展到加权网络。
While social living is considered to be an indispensable part of human life in today's ever-connected world, social distancing has recently received much public attention on its importance since the outbreak of the coronavirus pandemic. In fact, social distancing has long been practiced in nature among solitary species, and been taken by human as an effective way of stopping or slowing down the spread of infectious diseases. Here we consider a social distancing problem for how a population, when in a world with a network of social sites, decides to visit or stay at some sites while avoiding or closing down some others so that the social contacts across the network can be minimized. We model this problem as a network population game, where every individual tries to find some network sites to visit or stay so that he/she can minimize all his/her social contacts. In the end, an optimal strategy can be found for every one, when the game reaches an equilibrium. We show that a large class of equilibrium strategies can be obtained by selecting a set of social sites that forms a so-called maximal r-regular subnetwork. The latter includes many well studied network types, which are easy to identify or construct, and can be completely disconnected (with r = 0) for the most strict isolation, or allow certain degree of connectivities (with r > 0) for more flexible distancing. We derive the equilibrium conditions of these strategies, and analyze their rigidity and flexibility on different types of r-regular subnetworks. We also extend our model to weighted networks, when different contact values are assigned to different network sites.