论文标题

通过信任洞悉公平:金融深度学习的多尺度信任量化

Insights into Fairness through Trust: Multi-scale Trust Quantification for Financial Deep Learning

论文作者

Wong, Alexander, Hryniowski, Andrew, Wang, Xiao Yu

论文摘要

近年来,深度学习的成功导致其采用以应对金融服务任务的利益和流行率显着增加。经常出现的一个特殊问题是为金融服务采用深度学习的障碍,是发达的金融深度学习模型在其预测中是否公平,尤其是鉴于金融服务行业的强大治理和法规合规性要求。在金融深度学习中尚未探索的公平性的一个基本方面是信任的概念,其变化可能指出以自我为中心的公平观点,从而提供了对模型公平性的见解。在这项研究中,我们探讨了多尺度信任量化策略的可行性和实用性,以了解财务深度学习模型的公平性,尤其是在不同范围的不同情况下。更具体地说,我们在深层神经网络上进行多尺度的信任量化,以进行信用卡默认预测的目的:1)模型的总体信任度2)在所有可能的预测 - 真实关系下的信任水平,3)可能的预测频谱之间的信任水平,4)跨不同的人际信任级别的信任级别,例如,年龄,年龄,性别,教育和教育的范围和5),以及5),以及5),以及5),an an A an A an A an A an A AN AN AN AN AN AN AN AN AN AN AN AN AN AN AN AN AN AN AN AN AN AN AN AN AN。这项概念验证研究的见解表明,这种多尺度信任量化策略可能对金融服务的数据科学家和监管机构有所帮助,这是对金融深度学习解决方案的验证和认证的一部分,以获取对这些解决方案的公平性和信任的见解。

The success of deep learning in recent years have led to a significant increase in interest and prevalence for its adoption to tackle financial services tasks. One particular question that often arises as a barrier to adopting deep learning for financial services is whether the developed financial deep learning models are fair in their predictions, particularly in light of strong governance and regulatory compliance requirements in the financial services industry. A fundamental aspect of fairness that has not been explored in financial deep learning is the concept of trust, whose variations may point to an egocentric view of fairness and thus provide insights into the fairness of models. In this study we explore the feasibility and utility of a multi-scale trust quantification strategy to gain insights into the fairness of a financial deep learning model, particularly under different scenarios at different scales. More specifically, we conduct multi-scale trust quantification on a deep neural network for the purpose of credit card default prediction to study: 1) the overall trustworthiness of the model 2) the trust level under all possible prediction-truth relationships, 3) the trust level across the spectrum of possible predictions, 4) the trust level across different demographic groups (e.g., age, gender, and education), and 5) distribution of overall trust for an individual prediction scenario. The insights for this proof-of-concept study demonstrate that such a multi-scale trust quantification strategy may be helpful for data scientists and regulators in financial services as part of the verification and certification of financial deep learning solutions to gain insights into fairness and trust of these solutions.

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