Zhao Kai, Musolesi Mirco, Hui Pan, Rao Weixiong, Tarkoma Sasu
1] Department of Computer Science, University of Helsinki, Helsinki, Finland [2] Helsinki Institute for Information Technology, HIIT, Helsinki, Finland.
School of Computer Science, University of Birmingham, Birmingham, UK.
Sci Rep. 2015 Mar 16;5:9136. doi: 10.1038/srep09136.
Human mobility has been empirically observed to exhibit Lévy flight characteristics and behaviour with power-law distributed jump size. The fundamental mechanisms behind this behaviour has not yet been fully explained. In this paper, we propose to explain the Lévy walk behaviour observed in human mobility patterns by decomposing them into different classes according to the different transportation modes, such as Walk/Run, Bike, Train/Subway or Car/Taxi/Bus. Our analysis is based on two real-life GPS datasets containing approximately 10 and 20 million GPS samples with transportation mode information. We show that human mobility can be modelled as a mixture of different transportation modes, and that these single movement patterns can be approximated by a lognormal distribution rather than a power-law distribution. Then, we demonstrate that the mixture of the decomposed lognormal flight distributions associated with each modality is a power-law distribution, providing an explanation to the emergence of Lévy Walk patterns that characterize human mobility patterns.
根据经验观察,人类移动呈现出具有幂律分布跳跃大小的 Lévy 飞行特征和行为。这种行为背后的基本机制尚未得到充分解释。在本文中,我们建议通过根据不同的交通方式(如步行/跑步、自行车、火车/地铁或汽车/出租车/公交车)将人类移动模式分解为不同类别,来解释在人类移动模式中观察到的 Lévy 行走行为。我们的分析基于两个包含大约 1000 万和 2000 万带有交通方式信息的 GPS 样本的真实 GPS 数据集。我们表明,人类移动可以建模为不同交通方式的混合,并且这些单一移动模式可以用对数正态分布而不是幂律分布来近似。然后,我们证明与每种模态相关的分解后的对数正态飞行分布的混合是幂律分布,这为表征人类移动模式的 Lévy 行走模式的出现提供了解释。