让终端用户参与到人机交互的AI公平中

IF 4.3 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC
Yuri Nakao, Simone Stumpf, Subeida Ahmed, Aisha Naseer, Lorenzo Strappelli
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引用次数: 0

摘要

确保人工智能(AI)的公平性对于在影响深远的应用中消除偏见和歧视至关重要。最近的工作已经开始研究人类如何判断公平,以及如何支持机器学习专家使他们的人工智能模型更公平。从交互式机器学习中使用的可解释的人工智能方法(称为解释性调试)中获得灵感,我们的工作探索了设计可解释和交互式的人在循环界面,允许没有任何技术或领域背景的普通最终用户识别潜在的公平问题,并可能在贷款决策的背景下修复它们。通过与最终用户的研讨会,我们共同设计并实现了一个原型系统,该系统允许最终用户看到为什么做出预测,然后更改特性的权重以“调试”公平性问题。我们通过在线研究评估了这个原型系统的使用情况。为了研究全球不同人类价值观对公平的影响,我们还探讨了文化维度在使用这一原型时可能发挥的作用。我们的研究结果有助于界面的设计,允许最终用户通过人在循环的方法参与判断和解决人工智能的公平性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Toward Involving End-users in Interactive Human-in-the-loop AI Fairness

Ensuring fairness in artificial intelligence (AI) is important to counteract bias and discrimination in far-reaching applications. Recent work has started to investigate how humans judge fairness and how to support machine learning experts in making their AI models fairer. Drawing inspiration from an Explainable AI approach called explanatory debugging used in interactive machine learning, our work explores designing interpretable and interactive human-in-the-loop interfaces that allow ordinary end-users without any technical or domain background to identify potential fairness issues and possibly fix them in the context of loan decisions. Through workshops with end-users, we co-designed and implemented a prototype system that allowed end-users to see why predictions were made, and then to change weights on features to “debug” fairness issues. We evaluated the use of this prototype system through an online study. To investigate the implications of diverse human values about fairness around the globe, we also explored how cultural dimensions might play a role in using this prototype. Our results contribute to the design of interfaces to allow end-users to be involved in judging and addressing AI fairness through a human-in-the-loop approach.

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来源期刊
CiteScore
7.20
自引率
4.30%
发文量
567
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