Predicting the Slide to Long-Term Homelessness: Model and Validation

S. Purao, Monica J. Garfield, Xin Gu, Prakash Bhetwal
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引用次数: 1

Abstract

In spite of numerous programs and interventions, homelessness remains a significant societal concern. Long-term homelessness is particularly problematic because it can be increasingly difficult to escape from, and because it represents a continuous drain on societal resources. This paper develops a model for predicting long-term homelessness in response to a simple question: if an individual becomes homeless, what influences the individual's slide to long-term homelessness? The data we analyze to answer the question comes from the City of Boston. The model points to race, veteran status, disability, and age as key factors that predict this slide. The paper describes and illustrates the model along with problems encountered in data preparation and cleansing, prior scholarly work that helped to shape our decisions, and collaboration with participants in the ecosystem for homeless care that complemented the model-building effort. The results are important because they point to possible policy interventions (programs and funding) and process improvements (at homeless shelters) to mitigate this slide.
预测滑向长期无家可归:模型和验证
尽管有许多方案和干预措施,无家可归仍然是一个重大的社会问题。长期无家可归的问题尤其严重,因为它可能越来越难以摆脱,因为它代表着对社会资源的持续消耗。本文开发了一个预测长期无家可归的模型,以回答一个简单的问题:如果一个人无家可归,是什么影响了这个人滑向长期无家可归的状态?为了回答这个问题,我们分析的数据来自波士顿市。该模型指出,种族、退伍军人身份、残疾和年龄是预测这一下滑的关键因素。本文描述并说明了该模型以及在数据准备和清理中遇到的问题,帮助我们形成决策的先前学术工作,以及与无家可归者护理生态系统参与者的合作,这些都补充了模型构建的努力。研究结果很重要,因为它们指出了可能的政策干预(项目和资金)和流程改进(在无家可归者收容所),以缓解这种下滑。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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