Urbanization and its problems require an in-depth and comprehensive understanding of urban dynamics, especially the complex and diversified lifestyles in modern cities. Digitally acquired data can accurately capture complex human activity, but it lacks the interpretability of demographic data. In this paper, we study a privacy-enhanced dataset of the mobility visitation patterns of 1.2 million people to 1.1 million places in 11 metro areas in the U.S. to detect the latent mobility behaviors and lifestyles in the largest American cities. Despite the considerable complexity of mobility visitations, we found that lifestyles can be automatically decomposed into only 12 latent interpretable activity behaviors on how people combine shopping, eating, working, or using their free time. Rather than describing individuals with a single lifestyle, we find that city dwellers' behavior is a mixture of those behaviors. Those detected latent activity behaviors are equally present across cities and cannot be fully explained by main demographic features. Finally, we find those latent behaviors are associated with dynamics like experienced income segregation, transportation, or healthy behaviors in cities, even after controlling for demographic features. Our results signal the importance of complementing traditional census data with activity behaviors to understand urban dynamics.
翻译:城市化及其问题要求深入全面地了解城市动态,特别是现代城市复杂多样的生活方式。数字化数据可以准确地捕捉复杂的人类活动,但缺乏人口数据的可解释性。在本文中,我们研究了关于120万人口到美国11个地铁地区110万地点的流动访问模式的隐私强化数据集,以检测美国最大城市的潜在流动行为和生活方式。尽管流动访问相当复杂,但我们发现,生活方式可以自动地分解成仅12种关于人们如何将购物、饮食、工作或使用其自由时间结合起来的潜在可解释活动行为。我们发现,城市居民的行为不是以单一生活方式描述个人,而是这些行为的混合体。所检测到的潜在活动行为在城市各地也同样存在,不能用主要的人口特征来充分解释。最后,我们发现这些潜在行为与城市中经历过多的收入隔离、交通或健康行为等动态有关,即使在控制了人口特征之后。我们的结果表明,必须用活动行为来补充传统普查数据,以了解城市动态。