一种机器学习方法,用于评估多维贫困和针对被迫流离失所人口的援助

IF 5.4 1区 经济学 Q1 DEVELOPMENT STUDIES
Angela C. Lyons , Alejandro Montoya Castano , Josephine Kass-Hanna , Yifang Zhang , Aiman Soliman
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引用次数: 0

摘要

预计今后几年被迫流离失所和贫穷的趋势将进一步加剧。数据科学方法可以帮助政府和人道主义组织设计更有效的目标锁定机制。本研究应用机器学习技术,并将地理空间数据与过去四年从黎巴嫩的叙利亚难民收集的调查数据相结合,以帮助制定更有效和高效的目标策略。我们提出的方法有助于:(1)根据灵活的多维贫困指标确定最需要援助的家庭;(2)在不诉诸不切实际和昂贵的数据收集程序的情况下实施该方法。我们的研究结果强调了建立一个全面和通用的框架的重要性,该框架既要包括其他贫困维度,也要包括常用的支出指标,同时还要允许定期更新,以跟上(快速)变化的环境。分析还指出,地理异质性可能会影响目标战略的有效性。这项研究的见解对寻求改善目标和提高不断减少的人道主义资金效率的机构具有重要意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A machine learning approach to assessing multidimensional poverty and targeting assistance among forcibly displaced populations
Increasing trends in forced displacement and poverty are expected to intensify in coming years. Data science approaches can be useful for governments and humanitarian organizations in designing more effective targeting mechanisms. This study applies machine learning techniques and combines geospatial data with survey data collected from Syrian refugees in Lebanon over the last four years to help develop more effective and efficient targeting strategies. Our proposed approach helps: (1) identify the households most in need of assistance based on a flexible, multidimensional poverty metric and (2) operationalize this method without resorting to impractical and expensive data collection procedures. Our findings highlight the importance of a comprehensive and versatile framework that captures other poverty dimensions along with the commonly used expenditure metric, while also allowing for regular updates to keep up with (rapidly) changing contexts over time. The analysis also points to geographical heterogeneities that are likely to impact the effectiveness of targeting strategies. The insights from this study have important implications for agencies seeking to improve targeting and increase the efficiency of shrinking humanitarian funding.
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来源期刊
World Development
World Development Multiple-
CiteScore
12.70
自引率
5.80%
发文量
320
期刊介绍: World Development is a multi-disciplinary monthly journal of development studies. It seeks to explore ways of improving standards of living, and the human condition generally, by examining potential solutions to problems such as: poverty, unemployment, malnutrition, disease, lack of shelter, environmental degradation, inadequate scientific and technological resources, trade and payments imbalances, international debt, gender and ethnic discrimination, militarism and civil conflict, and lack of popular participation in economic and political life. Contributions offer constructive ideas and analysis, and highlight the lessons to be learned from the experiences of different nations, societies, and economies.
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