指纹识别人类近距离接触的时间网络

A. Panisson, L. Gauvin, A. Barrat, C. Cattuto
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引用次数: 12

摘要

移动设备和可穿戴传感器正在以前所未有的详细程度记录人类的移动性和接近程度。在这里,我们关注的是通过无线可穿戴传感器在各种现实环境中测量的近距离人类接近网络。我们表明,在时变接近网络上计算的简单动态过程可以揭示交互模式的重要特征,这些特征超越了异质性和突发性的标准统计指标,并且可以区分数据集,否则看起来在统计上相似。我们表明,由于人类动态的内在时间异质性,在时变的人类接触网络中传播过程的表征可能受益于放弃挂钟时间的概念,而支持基于单个节点接触活动的特定节点的时间概念。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fingerprinting temporal networks of close-range human proximity
Mobile devices and wearable sensors are making available records of human mobility and proximity with unprecedented levels of detail. Here we focus on close-range human proximity networks measured by means of wireless wearable sensors in a variety of real-world environments. We show that simple dynamical processes computed over the time-varying proximity networks can uncover important features of the interaction patterns that go beyond standard statistical indicators of heterogeneity and burstiness, and can tell apart datasets that would otherwise look statistically similar. We show that, due to the intrinsic temporal heterogeneity of human dynamics, the characterization of spreading processes over time-varying networks of human contact may benefit from abandoning the notion of wall-clock time in favor of a node-specific notion of time based on the contact activity of individual nodes.
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