Universidad Politécnica de Madrid, Madrid, Spain.
Université Catholique de Louvain, Louvain, Belgium.
PLoS One. 2018 Apr 26;13(4):e0195714. doi: 10.1371/journal.pone.0195714. eCollection 2018.
We propose a framework for the systematic analysis of mobile phone data to identify relevant mobility profiles in a population. The proposed framework allows finding distinct human mobility profiles based on the digital trace of mobile phone users characterized by a Matrix of Individual Trajectories (IT-Matrix). This matrix gathers a consistent and regularized description of individual trajectories that enables multi-scale representations along time and space, which can be used to extract aggregated indicators such as a dynamic multi-scale population count. Unsupervised clustering of individual trajectories generates mobility profiles (clusters of similar individual trajectories) which characterize relevant group behaviors preserving optimal aggregation levels for detailed and privacy-secured mobility characterization. The application of the proposed framework is illustrated by analyzing fully anonymized data on human mobility from mobile phones in Senegal at the arrondissement level over a calendar year. The analysis of monthly mobility patterns at the livelihood zone resolution resulted in the discovery and characterization of seasonal mobility profiles related with economic activities, agricultural calendars and rainfalls. The use of these mobility profiles could support the timely identification of mobility changes in vulnerable populations in response to external shocks (such as natural disasters, civil conflicts or sudden increases of food prices) to monitor food security.
我们提出了一个框架,用于系统地分析手机数据,以识别人群中的相关移动模式。该框架允许根据移动电话用户的数字轨迹(个体轨迹矩阵)找到不同的人类移动模式。该矩阵收集了个体轨迹的一致和正则化描述,能够实现时间和空间上的多尺度表示,可用于提取聚合指标,如动态多尺度人口计数。个体轨迹的无监督聚类生成移动模式(相似个体轨迹的聚类),这些模式描述了相关的群体行为,同时保持了详细和隐私安全的移动特征的最佳聚合水平。该框架的应用通过分析塞内加尔一个行政区内一整年的手机移动的完全匿名数据进行了说明。在生计区分辨率下分析月度移动模式,发现并描述了与经济活动、农业日历和降雨相关的季节性移动模式。这些移动模式的使用可以支持及时识别弱势群体的移动变化,以应对外部冲击(如自然灾害、内战或粮食价格突然上涨),从而监测粮食安全。