论文标题

一个城市,两个故事:使用移动网络来了解Covid-19期间的邻里韧性和脆弱性

One City, Two Tales: Using Mobility Networks to Understand Neighborhood Resilience and Fragility during the COVID-19 Pandemic

论文作者

Boz, Hasan Alp, Bahrami, Mohsen, Balcisoy, Selim, Bozkaya, Burcin, Mazar, Nina, Nichols, Aaron, Pentland, Alex

论文摘要

是什么预测了社区对基本公共卫生政策和就地庇护所的适应性和适应性,从而防止了Covid-19的有害传播?为了回答这个问题,在本文中,我们介绍了人类流动性模式和人类行为在网络环境中的新应用。从2019年1月到2020年12月,我们在纽约市分析了纽约市的移动性数据,并通过汇总了兴趣点访问模式,在人口普查块组之间创建每周的移动网络。我们的结果表明,社区的社会经济和地理属性都可以显着预测当时有活跃的现场政策的社区适应性。也就是说,我们的发现和模拟结果表明,除了种族,教育和收入等因素外,地理属性,例如在满足社区需求的社区中获得便利设施,这是预测社区适应性和COVID-19的传播同等重要的因素。我们的研究结果提供了见解,可以增强有助于大流行努力的城市规划策略,这反过来又可能有助于城市地区对诸如Covid-19-19的大流行等外源性冲击更具弹性。

What predicts a neighborhood's resilience and adaptability to essential public health policies and shelter-in-place regulations that prevent the harmful spread of COVID-19? To answer this question, in this paper we present a novel application of human mobility patterns and human behavior in a network setting. We analyze mobility data in New York City over two years, from January 2019 to December 2020, and create weekly mobility networks between Census Block Groups by aggregating Point of Interest level visit patterns. Our results suggest that both the socioeconomic and geographic attributes of neighborhoods significantly predict neighborhood adaptability to the shelter-in-place policies active at that time. That is, our findings and simulation results reveal that in addition to factors such as race, education, and income, geographical attributes such as access to amenities in a neighborhood that satisfy community needs were equally important factors for predicting neighborhood adaptability and the spread of COVID-19. The results of our study provide insights that can enhance urban planning strategies that contribute to pandemic alleviation efforts, which in turn may help urban areas become more resilient to exogenous shocks such as the COVID-19 pandemic.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源