A Visualization Approach for Simulating and Analyzing Infection Spread Dynamics Using Temporal Networks

Jean R. Ponciano, Gabriel P. Vezono, Claudio D. G. Linhares
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Abstract

Temporal networks have been widely used to model instances of a domain of interest and their time-evolving interaction, including modeling individuals and face-to-face contacts throughout time. In the context of infection spread, such individuals can, e.g., remain susceptible, recovered, or be infected at a particular time. Understanding the infection spread behavior (its speed and magnitude, for instance) is crucial for quick and reliable decision making. Network visualization strategies can help in this task as they allow easy identification of who infected whom and when, epidemics outbreak, and other relevant aspects. This paper presents a visualization approach for the simulation and analysis of infection spread dynamics that considers different infection probabilities and different levels of social distancing (inter-group interaction). We performed quantitative and visual experiments using three real-world social networks with distinct characteristics and from two different environments. Our findings reveal the overall influence of different levels of inter-group interaction and infection probabilities in the infection spread dynamics and also demonstrate the usefulness of our approach for enhanced local (individual- or group-level) investigations.
利用时间网络模拟和分析感染传播动态的可视化方法
时间网络已被广泛用于建模感兴趣的领域的实例及其随时间变化的相互作用,包括建模个体和面对面的接触在整个时间。在感染传播的情况下,这些个体可以,例如,保持易感、恢复或在特定时间被感染。了解感染传播行为(例如其速度和规模)对于快速可靠的决策至关重要。网络可视化策略可以帮助完成这项任务,因为它们可以轻松识别谁感染了谁,何时感染了谁,流行病爆发以及其他相关方面。本文提出了一种可视化方法,用于模拟和分析感染传播动态,该方法考虑了不同的感染概率和不同的社会距离水平(群体间互动)。我们在两个不同的环境中使用三个具有不同特征的真实社会网络进行了定量和视觉实验。我们的研究结果揭示了不同水平的群体间相互作用和感染概率对感染传播动态的总体影响,也证明了我们的方法对增强本地(个人或群体水平)调查的有用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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