How Much Does Racial Bias Affect Mortgage Lending? Evidence from Human and Algorithmic Credit Decisions

Neil Bhutta, Aurel Hizmo, Daniel R. Ringo
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引用次数: 32

Abstract

We assess racial discrimination in mortgage approvals using new data on mortgage applications. Minority applicants tend to have significantly lower credit scores, higher leverage, and are less likely than white applicants to receive algorithmic approval from race-blind government automated underwriting systems (AUS). Observable applicant-risk factors explain most of the racial disparities in lender denials. Further, we exploit the AUS data to show there are risk factors we do not directly observe, and our analysis indicates that these factors explain at least some of the residual 1-2 percentage point denial gaps. Overall, we find that differential treatment has played a limited role in generating denial disparities in recent years.
种族偏见对抵押贷款有多大影响?来自人类和算法信用决策的证据
我们使用抵押贷款申请的新数据评估抵押贷款批准中的种族歧视。少数族裔申请人的信用评分往往较低,杠杆率较高,而且与白人申请人相比,少数族裔申请人获得不分种族的政府自动承销系统(AUS)算法批准的可能性较小。可观察到的申请人风险因素解释了大多数贷款人拒绝的种族差异。此外,我们利用AUS数据来显示存在我们没有直接观察到的风险因素,我们的分析表明,这些因素至少可以解释剩余的1-2个百分点的拒绝差距。总体而言,我们发现近年来,差别待遇在产生拒绝差异方面发挥了有限的作用。
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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