论文标题
探索在线食品交付数据的使用情况,用于城市内部工作和住房移动性检测和表征
Exploring the Usage of Online Food Delivery Data for Intra-Urban Job and Housing Mobility Detection and Characterization
论文作者
论文摘要
人类流动性在城市规划和决策中起着至关重要的作用。但是,在某些空间和时间分辨率下,跟踪工作和住房移动性是非常具有挑战性的。在这项研究中,我们探讨了一种新的数据集,在线食品传递数据,检测工作和住房移动性的新方式。通过利用中国北京一项流行的在线食品订购和送货服务的数百万美元订单,我们能够以更高的空间和时间分辨率来检测工作和住房移动,而不是使用传统数据来源。可以很好地识别流行的移动季节和起源/目的地。更重要的是,我们将检测到的移动与宏观和微观级别的因素相匹配,以表征工作和住房动态。我们的发现表明,通勤距离是工作和住房移动性的主要因素。我们还观察到:(1)对于家庭搬运工,鉴于城市空间结构,较低的住房成本与较短的通勤距离之间进行了权衡; (2)对于求职者来说,那些经常加班的人更有可能通过换工作来减少工作时间。尽管这种新的数据集模式具有其局限性,但我们认为合奏方法将是有希望的,在这些数据集的混搭中,具有不同特征局限性的数据集可以为工作和住房动态提供更全面的图景。我们的工作证明了利用食品输送数据来检测和分析工作和住房流动性的有效性,并有助于实现基于合奏的方法的全部潜力。
Human mobility plays a critical role in urban planning and policy-making. However, at certain spatial and temporal resolutions, it is very challenging to track, for example, job and housing mobility. In this study, we explore the usage of a new modality of dataset, online food delivery data, to detect job and housing mobility. By leveraging millions of meal orders from a popular online food ordering and delivery service in Beijing, China, we are able to detect job and housing moves at much higher spatial and temporal resolutions than using traditional data sources. Popular moving seasons and origins/destinations can be well identified. More importantly, we match the detected moves to both macro- and micro-level factors so as to characterize job and housing dynamics. Our findings suggest that commuting distance is a major factor for job and housing mobility. We also observe that: (1) For home movers, there is a trade-off between lower housing cost and shorter commuting distance given the urban spatial structure; (2) For job hoppers, those who frequently work overtime are more likely to reduce their working hours by switching jobs. While this new modality of dataset has its limitations, we believe that ensemble approaches would be promising, where a mash-up of multiple datasets with different characteristic limitations can provide a more comprehensive picture of job and housing dynamics. Our work demonstrates the effectiveness of utilizing food delivery data to detect and analyze job and housing mobility, and contributes to realizing the full potential of ensemble-based approaches.