Estimating long-term K-12 student homelessness after a catastrophic flood disaster

Ram Krishna Mazumder , S. Amin Enderami , Nathanael Rosenheim , Elaina J. Sutley , Michelle Stanley , Michelle Meyer
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引用次数: 1

Abstract

Despite efforts to end homelessness in the United States, student homelessness is gradually growing over the past decade. Homelessness creates physical and psychological disadvantages for students and often disrupts school access. Research suggests that students who experience prolonged dislocation and school disruption after a disaster are primarily from low-income households and under-resourced areas. This study develops a framework to predict post-disaster trajectories for kindergarten through high school (K-12) students faced with a major disaster; the framework includes an estimation on the households with children who recover and those who experience long-term homelessness. Using the National Center for Education Statistics school attendance boundaries, residential housing inventory, and U.S. Census data, the framework first identifies students within school boundaries and links schools to students to housing. The framework then estimates dislocation induced by the disaster scenario and tracks the stage of post-disaster housing for each dislocated student. The recovery of dislocated students is predicted using a multi-state Markov chain model, which captures the sequences that households transition through the four stages of post-disaster housing (i.e., emergency shelter, temporary shelter, temporary housing, and permanent housing) based on the social vulnerability of the household. Finally, the framework predicts the number of students experiencing long-term homelessness and maps the students back to their pre-disaster school. The proposed framework is exemplified for the case of Hurricane Matthew-induced flooding in Lumberton, North Carolina. Findings highlight the disparate outcomes households with children face after major disasters and can be used to aid decision-making to reduce future disaster impacts on students.

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估计在灾难性的洪水灾害后,K-12学生长期无家可归
尽管美国努力结束无家可归现象,但在过去十年中,学生无家可归的现象正在逐渐增加。无家可归给学生造成了身体和心理上的不利影响,并经常干扰上学。研究表明,灾难后经历长期混乱和学校中断的学生主要来自低收入家庭和资源不足地区。这项研究开发了一个框架来预测幼儿园到高中(K-12)面临重大灾难的学生的灾后轨迹;该框架包括对有孩子康复的家庭和长期无家可归的家庭的估计。该框架利用国家教育统计中心的学校入学率边界、住房存量和美国人口普查数据,首先确定了学校边界内的学生,并将学校与学生的住房联系起来。然后,该框架估计了灾难场景引起的错位,并跟踪了每个错位学生的灾后住房阶段。使用多状态马尔可夫链模型预测脱困学生的康复情况,该模型捕捉了家庭根据家庭的社会脆弱性在灾后住房的四个阶段(即紧急避难所、临时避难所、临时住房和永久住房)过渡的顺序。最后,该框架预测了长期无家可归的学生人数,并将学生映射回灾前的学校。拟议的框架以飓风马修在北卡罗来纳州蓝伯顿引发的洪水为例。研究结果突出了有孩子的家庭在重大灾难后面临的不同结果,可用于帮助决策,以减少未来灾难对学生的影响。
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