Natural disasters can significantly disrupt human mobility in urban areas. Studies have attempted to understand and quantify such disruptions using crowdsourced mobility data sets. However, limited research has studied the justice issues of mobility data in the context of natural disasters. The lack of research leaves us without an empirical foundation to quantify and control the possible biases in the data. This study, using 2017 Hurricane Harvey as a case study, explores three aspects of mobility data that could potentially cause injustice: representativeness, quality, and precision. We find representativeness being a major factor contributing to mobility data injustice. There is a persistent disparity of representativeness across neighborhoods of different socioeconomic characteristics before, during, and after the hurricane's landfall. Additionally, we observed significant drops of data precision during the hurricane, adding uncertainty to locate people and understand their movements during extreme weather events. The findings highlight the necessity in understanding and controlling the possible bias of mobility data as well as developing practical tools through data justice lenses in collecting and analyzing data during disasters.
翻译:研究试图利用多方联动数据集来理解和量化这种干扰,然而,研究范围有限,研究自然灾害情况下流动数据的司法问题;缺乏研究使我们没有经验基础来量化和控制数据中可能存在的偏差;这项研究以2017年哈维飓风为案例研究,探讨流动数据中可能造成不公的三个方面:代表性、质量和准确性;我们发现代表性是造成流动数据不公的主要因素;飓风登陆之前、期间和之后,不同社会经济特征的街区之间始终存在代表性差异;此外,我们注意到飓风期间数据精确度显著下降,增加了在极端天气事件期间查找和了解人员下落的不确定性;研究结果突出表明,有必要了解和控制流动数据可能存在的偏差,并通过数据司法透镜开发实用工具,以收集和分析灾害期间的数据。