1] Institut de Physique Théorique, CEA-CNRS (URA 2306), Orme-des-Merisiers Batiment 774, F-91191 Paris, France [2] Géographie-Cités, CNRS-Paris 1-Paris 7 (UMR 8504), 13 rue du four, FR-75006 Paris, France.
IFISC, Instituto de Física Interdisciplinar y Sistemas Complejos (CSIC-UIB), Campus Universitat de les Illes Balears, Palma de Mallorca E-07122, Spain.
Nat Commun. 2015 Jan 21;6:6007. doi: 10.1038/ncomms7007.
The extraction of a clear and simple footprint of the structure of large, weighted and directed networks is a general problem that has relevance for many applications. An important example is seen in origin-destination matrices, which contain the complete information on commuting flows, but are difficult to analyze and compare. We propose here a versatile method, which extracts a coarse-grained signature of mobility networks, under the form of a 2 × 2 matrix that separates the flows into four categories. We apply this method to origin-destination matrices extracted from mobile phone data recorded in 31 Spanish cities. We show that these cities essentially differ by their proportion of two types of flows: integrated (between residential and employment hotspots) and random flows, whose importance increases with city size. Finally, the method allows the determination of categories of networks, and in the mobility case, the classification of cities according to their commuting structure.
提取大型加权有向网络的清晰简单结构是一个普遍存在的问题,它与许多应用都相关。在起源 - 目的地矩阵中就可以看到一个重要的例子,它包含了通勤流的完整信息,但难以分析和比较。我们在这里提出了一种通用的方法,以 2×2 矩阵的形式提取移动性网络的粗粒度特征,该矩阵将流量分为四类。我们将该方法应用于从 31 个西班牙城市的移动电话数据中提取的起源 - 目的地矩阵。我们表明,这些城市本质上的区别在于两种类型的流量的比例:集成(在居住和就业热点之间)和随机流量,随着城市规模的增加,其重要性也会增加。最后,该方法允许确定网络类别,并且在移动性的情况下,可以根据通勤结构对城市进行分类。