In the past few years, Artificial Intelligence (AI) has garnered attention from various industries including financial services (FS). AI has made a positive impact in financial services by enhancing productivity and improving risk management. While AI can offer efficient solutions, it has the potential to bring unintended consequences. One such consequence is the pronounced effect of AI-related unfairness and attendant fairness-related harms. These fairness-related harms could involve differential treatment of individuals; for example, unfairly denying a loan to certain individuals or groups of individuals. In this paper, we focus on identifying and mitigating individual unfairness and leveraging some of the recently published techniques in this domain, especially as applicable to the credit adjudication use case. We also investigate the extent to which techniques for achieving individual fairness are effective at achieving group fairness. Our main contribution in this work is functionalizing a two-step training process which involves learning a fair similarity metric from a group sense using a small portion of the raw data and training an individually "fair" classifier using the rest of the data where the sensitive features are excluded. The key characteristic of this two-step technique is related to its flexibility, i.e., the fair metric obtained in the first step can be used with any other individual fairness algorithms in the second step. Furthermore, we developed a second metric (distinct from the fair similarity metric) to determine how fairly a model is treating similar individuals. We use this metric to compare a "fair" model against its baseline model in terms of their individual fairness value. Finally, some experimental results corresponding to the individual unfairness mitigation techniques are presented.
翻译:在过去几年里,人工智能(AI)引起了包括金融服务在内的各种行业的注意。大赦国际通过提高生产力和改进风险管理,对金融服务产生了积极影响。大赦国际可以提供高效的解决办法,但有可能带来意想不到的后果。这种后果之一是与AI有关的不公平和随之而来的与公平有关的伤害的明显影响。这些与公平有关的伤害可能涉及对个人的差别待遇;例如不公平地拒绝向某些个人或个人群体提供贷款。在本文件中,我们侧重于查明和减轻个人不公平,利用最近公布的这一领域的一些技术,特别是适用于信用判决使用率的案例。大赦国际还调查了实现个人公平的技术在多大程度上能够有效地实现群体公平。我们这项工作的主要贡献是将一个两步培训进程化,即利用原始数据中的一小部分从群体的角度学习公平性衡量标准,并利用我们所介绍的敏感特征的其余部分来培训一个个人“公平”分类模型。这一两步方法的主要特征是其灵活性,特别是适用于信用判决使用信用判决的公平性案例。我们首先从个人基准到另一个步骤的公平性标准。我们用一个步骤从个人基准到另一个步骤,从个人标准的第二个步骤,从一个步骤到另一个步骤,我们用一个公平性的标准,从一个步骤从一个步骤到另一个步骤,从个人标准,从一个步骤从一个步骤到另一个步骤,从一个步骤用一个公平性的标准,从一个步骤,从一个步骤从一个步骤从一个步骤到另一个,从一个步骤,从一个步骤从一个步骤从一个步骤从一个步骤从一个步骤从一个步骤到另一个,从一个步骤从一个步骤从一个步骤到一个步骤到一个步骤从一个步骤到一个步骤从一个步骤从一个步骤到一个步骤从一个步骤到一个步骤从一个步骤到一个步骤从一个步骤从一个步骤从一个步骤到另一个方法从一个步骤从一个步骤从一个步骤到一个步骤从一个步骤到一个步骤到一个步骤从一个步骤到一个步骤从一个步骤到一个步骤到一个步骤到一个步骤从一个。