LGCYOct 5, 2022

Equalizing Credit Opportunity in Algorithms: Aligning Algorithmic Fairness Research with U.S. Fair Lending Regulation

arXiv:2210.02516v133 citationsh-index: 38
Originality Synthesis-oriented
AI Analysis

It tackles the problem of ensuring fair credit access for marginalized groups by bridging gaps between technical research and legal enforcement, though it is incremental in synthesizing existing knowledge rather than introducing new methods.

The paper addresses the misalignment between algorithmic fairness research and U.S. fair lending regulations, analyzing how machine learning in credit scoring may lead to illegal discrimination and proposing ways to integrate research insights with regulatory frameworks.

Credit is an essential component of financial wellbeing in America, and unequal access to it is a large factor in the economic disparities between demographic groups that exist today. Today, machine learning algorithms, sometimes trained on alternative data, are increasingly being used to determine access to credit, yet research has shown that machine learning can encode many different versions of "unfairness," thus raising the concern that banks and other financial institutions could -- potentially unwittingly -- engage in illegal discrimination through the use of this technology. In the US, there are laws in place to make sure discrimination does not happen in lending and agencies charged with enforcing them. However, conversations around fair credit models in computer science and in policy are often misaligned: fair machine learning research often lacks legal and practical considerations specific to existing fair lending policy, and regulators have yet to issue new guidance on how, if at all, credit risk models should be utilizing practices and techniques from the research community. This paper aims to better align these sides of the conversation. We describe the current state of credit discrimination regulation in the United States, contextualize results from fair ML research to identify the specific fairness concerns raised by the use of machine learning in lending, and discuss regulatory opportunities to address these concerns.

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