Human mobility describes physical patterns of movement of people within a spatial system. Many of these patterns, including daily commuting, are cyclic and quantifiable. These patterns capture physical phenomena tied to processes studied in epidemiology, and other social, behavioral, and economic sciences. This paper advances human mobility research by proposing a statistical method for identifying locations that individual move to and through at a rate proportionally higher than other locations, using commuting data for the country of New Zealand as a case study. These locations are termed mobility loci and they capture a global property of communities in which people commute. The method makes use of a directed-graph representation where vertices correspond to locations and traffic between locations correspond to edge weights. Following a normalization, the graph can be regarded as a Markov chain whose stationary distribution can be calculated. The proposed permutation procedure is then applied to determine which stationary distributions are larger than what would be expected, given the structure of the directed graph and traffic between locations. The results of this method are evaluated, including a comparison to what is already known about commuting patterns in the area as well as a comparison with similar features.
翻译:人类流动描述的是空间系统内人员流动的物理模式,其中许多模式,包括每日通勤,是循环和量化的,这些模式反映了与流行病学和其他社会、行为和经济科学研究过程相联系的物理现象,本文件提出统计方法,用新西兰国家的通勤数据作为案例研究,确定个人进出比其他地点比例高的移动地点,以此促进人类流动研究,这些地点被称为流动地点,它们反映了人们通勤社区的全球财产。这种方法使用了定向制图代表,在指示表中,各地点之间的脊椎对应位置和交通与边缘重量相对应。在正常化之后,该图可被视为马尔科夫链,其固定分布可以计算。随后,根据定向图表的结构和各地点之间的交通情况,采用拟议的调换程序确定哪些固定分布大于预期。对这种方法的结果进行了评估,包括与该地区已知的通勤模式进行比较,并与类似的特征进行比较。