Muñoz-Cancino Ricardo, Ríos Sebastián A, Graña Manuel
Computational Intelligence Group, University of Basque Country, 20018 San Sebastián, Spain.
Business Intelligence Research Center (CEINE), Department of Industrial Engineering, University of Chile, Beauchef 851, Santiago 8370456, Chile.
Sensors (Basel). 2023 May 29;23(11):5165. doi: 10.3390/s23115165.
The impact of micro-level people's activities on urban macro-level indicators is a complex question that has been the subject of much interest among researchers and policymakers. Transportation preferences, consumption habits, communication patterns and other individual-level activities can significantly impact large-scale urban characteristics, such as the potential for innovation generation of the city. Conversely, large-scale urban characteristics can also constrain and determine the activities of their inhabitants. Therefore, understanding the interdependence and mutual reinforcement between micro- and macro-level factors is critical to defining effective public policies. The increasing availability of digital data sources, such as social media and mobile phones, has opened up new opportunities for the quantitative study of this interdependency. This paper aims to detect meaningful city clusters on the basis of a detailed analysis of the spatiotemporal activity patterns for each city. The study is carried out on a worldwide city dataset of spatiotemporal activity patterns obtained from geotagged social media data. Clustering features are obtained from unsupervised topic analyses of activity patterns. Our study compares state-of-the-art clustering models, selecting the model achieving a 2.7% greater Silhouette Score than the next-best model. Three well-separated city clusters are identified. Additionally, the study of the distribution of the City Innovation Index over these three city clusters shows discrimination of low performing from high performing cities relative to innovation. Low performing cities are identified in one well-separated cluster. Therefore, it is possible to correlate micro-scale individual-level activities to large-scale urban characteristics.
微观层面的人类活动对城市宏观层面指标的影响是一个复杂的问题,一直是研究人员和政策制定者非常感兴趣的主题。交通偏好、消费习惯、通信模式和其他个人层面的活动会对大规模的城市特征产生重大影响,比如城市产生创新的潜力。相反,大规模的城市特征也会限制并决定其居民的活动。因此,理解微观和宏观层面因素之间的相互依存和相互促进关系对于制定有效的公共政策至关重要。数字数据源(如社交媒体和手机)的日益普及为定量研究这种相互依存关系带来了新机遇。本文旨在通过对每个城市的时空活动模式进行详细分析,来检测有意义的城市集群。该研究是基于从带有地理标记的社交媒体数据中获取的全球城市时空活动模式数据集开展的。聚类特征是通过对活动模式进行无监督主题分析获得的。我们的研究比较了最先进的聚类模型,选择了轮廓系数比次优模型高2.7%的模型。识别出了三个界限分明的城市集群。此外,对这三个城市集群的城市创新指数分布的研究表明,相对于创新而言,低绩效城市与高绩效城市之间存在差异。在一个界限分明的集群中识别出了低绩效城市。因此,将微观层面的个人活动与大规模的城市特征联系起来是有可能的。