使用机器学习来理解退伍军人在薪水保护计划中的贷款收据

C. Makridis, J. Kelly, G. Alterovitz
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引用次数: 0

摘要

本文首次对4月至6月退伍军人工资保障计划(PPP)的资金接收情况进行了定量调查。我们发现,退伍军人获得的贷款比同龄人多3.5%,贷款规模大6.8% (p<0.01),控制了广泛的邮政编码特征,并利用邮政编码内的变化进一步增强了稳健性。随后,我们使用机器学习来预测退伍军人的PPP贷款收据,发现当地退伍军人事务部医疗中心的质量特征是可预测的。我们开发了模型来预测退伍军人拥有的PPP贷款数量,发现纳入当地退伍军人医疗中心特征的解释力几乎与一个地区的行业和职业构成一样多,甚至超过了教育、种族和年龄分布的总和。我们的研究结果表明,退伍军人医疗中心可以在帮助退伍军人茁壮成长方面发挥重要作用,甚至不仅仅是解决他们的直接医疗需求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using Machine Learning to Understand Veterans' Receipt of Loans in the Paycheck Protection Program
This paper provides the first quantitative investigation of the receipt of funds from the Paycheck Protection Program (PPP) among Veterans between April and June. We find that Veterans received 3.5% more loans and 6.8% larger loans than their counterparts (p<0.01), controlling for a wide array of zipcode characteristics and exploits within-zipcode variation in further robustness. We subsequently use machine learning to predict PPP loan receipt among Veterans, finding that characteristics about quality of the local Department of Veterans Affairs medical centers are predictive. We develop models to predict the number of PPP loans awarded to Veteran-owned, finding that the inclusion of local VA medical center characteristics adds almost as much explanatory power as the industry and occupational composition in an area and even more than the education, race, and age distribution combined. Our results suggest that VA medical centers can play an important role in helping Veterans thrive even beyond addressing their direct medical needs.
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