@article{bd4e56151d564bbab50506ca8ffa2fb6,
title = "A machine learning approach to assessing multidimensional poverty and targeting assistance among forcibly displaced populations",
abstract = "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.",
keywords = "Forced displacement, Humanitarian assistance, Machine learning, Multidimensional poverty, Poverty targeting, Refugees",
author = "Lyons, {Angela C.} and {Montoya Castano}, Alejandro and Josephine Kass-Hanna and Yifang Zhang and Aiman Soliman",
note = "We wish to thank Raffi Kouzoudjian, Information Management Officer at UNHCR, for his kind assistance with the data and support of this project. This work was funded in part by the National Center for Supercomputing Applications (NCSA) and Illinois Computes, the Illinois Campus Research Board in the Office of the Vice Chancellor for Research, and the Office of International Programs in the College of Agricultural, Consumer and Environmental Sciences at the University of Illinois. Generous support was also provided by the USDA National Institute of Food and Agriculture, Hatch Project [1024950]. Thank you also to participants of the Economic Research Forum's 29th Annual Conference in Cairo, Egypt. We are especially grateful to Khalid Abu Ismail and Mary Kawar for insightful comments and suggestions. This work was sponsored by the Economic Research Forum (ERF) and has benefited from both financial and intellectual support. The views expressed in this work are entirely those of the author(s) and should not be attributed to ERF, its Board of Trustees or donors. Finally, we thank Pooja Petali, Deepika Pingali, David Zhu, and Ishaan Salaskar for research assistance with coding, analysis, and preparing the GitHub. Any errors or omissions are the responsibility of the authors. We wish to thank Raffi Kouzoudjian, Information Management Officer at UNHCR , for his kind assistance with the data and support of this project. This work was funded in part by the National Center for Supercomputing Applications (NCSA) and Illinois Computes, the Illinois Campus Research Board in the Office of the Vice Chancellor for Research, and the Office of International Programs in the College of Agricultural, Consumer and Environmental Sciences at the University of Illinois . Generous support was also provided by the USDA National Institute of Food and Agriculture , Hatch Project [ 1024950 ]. Thank you also to participants of the Economic Research Forum \u2019s 29 th Annual Conference in Cairo, Egypt. We are especially grateful to Khalid Abu Ismail and Mary Kawar for insightful comments and suggestions. This work was sponsored by the Economic Research Forum (ERF) and has benefited from both financial and intellectual support. The views expressed in this work are entirely those of the author(s) and should not be attributed to ERF, its Board of Trustees or donors. Finally, we thank Pooja Petali, Deepika Pingali, David Zhu, and Ishaan Salaskar for research assistance with coding, analysis, and preparing the GitHub. Any errors or omissions are the responsibility of the authors.",
year = "2025",
month = aug,
doi = "10.1016/j.worlddev.2025.107013",
language = "English (US)",
volume = "192",
journal = "World Development",
issn = "0305-750X",
publisher = "Elsevier BV",
}