Using mobile phone big data to discover the spatial patterns of rural migrant workers' return to work in China's three urban agglomerations in the post-COVID-19 era.

IF 0.2 3区 文学 0 LANGUAGE & LINGUISTICS TRANSLATION REVIEW Pub Date : 2023-05-01 Epub Date: 2022-02-02 DOI:10.1177/23998083211069375
Kai Liu, Pengjun Zhao, Dan Wan, Xiaodong Hai, Zhangyuan He, Qiyang Liu, Yonghui Qu, Xue Zhang, Kaixi Li, Ling Yu
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Abstract

Knowing how workers return to work is a key policymaking issue for economic recovery in the post-COVID-19 era. This paper uses country-wide time-series mobile phone big data (comparing monthly and annual figures), obtained between February 2019 and October 2019 and between February 2020 and October 2020, to discover the spatial patterns of rural migrant workers' (RMWs') return to work in China's three urban agglomerations (UAs): the Beijing-Tianjin-Hebei Region, the Yangtze River Delta and the Pearl River Delta. Spatial patterns of RMWs' return to work and how these patterns vary with location, city level and human attribute were investigated using the fine-scale social sensing related to post-pandemic human mobility. The results confirmed the multidimensional spatiotemporal differentiations, interaction effects between variable pairs and effects of the actual situation on the changing patterns of RMWs' return to work. The spatial patterns of RMWs' return to work in China's major three UAs can be regarded as a comprehensive and complex interaction result accompanying the nationwide population redistribution, which was affected by various hidden factors. Our findings provide crucial implications and suggestions for data-informed policy decisions for a harmonious society in the post-COVID-19 era.

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利用手机大数据发现 "后COVID-19 "时代中国三个城市群农民工返乡就业的空间模式。
了解工人如何重返工作岗位是后 "COVID-19 "时代经济复苏的关键决策问题。本文利用2019年2月至2019年10月和2020年2月至2020年10月的全国时序手机大数据(月度和年度数据比较),发现了中国京津冀、长三角和珠三角三个城市群农民工返乡就业的空间模式。利用与大流行后人口流动相关的精细尺度社会传感,研究了农村妇女重返工作岗位的空间模式,以及这些模式如何随地点、城市级别和人口属性而变化。结果证实了多维时空差异、变量对之间的交互效应以及实际情况对 RMWs 返岗模式变化的影响。中国主要三个统一地区的农民工返乡就业空间格局,可以看作是伴随着全国范围内的人口再分布,受各种隐性因素影响而产生的综合、复杂的互动结果。我们的研究结果为后 COVID-19 时代和谐社会的数据化决策提供了重要的启示和建议。
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TRANSLATION REVIEW
TRANSLATION REVIEW Multiple-
CiteScore
0.50
自引率
20.00%
发文量
38
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