人工智能反腐败工具的不公正性:主要驱动因素和后果

IF 4.2 3区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Fernanda Odilla
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引用次数: 0

摘要

本文讨论了用于反腐败工作的人工智能(AI)预测工具中不公平现象的潜在根源和后果。文章以巴西的三个基于人工智能的反腐工具为例--对公共采购中的腐败行为、公职人员中的腐败行为以及女性草根候选人在竞选中的腐败行为进行风险评估--说明了不公平是如何在基础设施、个人和机构层面出现的。文章借鉴了对直接参与反腐工具开发的执法官员的访谈,以及学术和灰色文献,包括官方报告和论文中用作范例的工具。不公平的潜在来源包括有问题的数据、统计学习问题、开发者和使用者的个人价值观和信仰,以及创建和部署这些工具的组织内部的管理和实践。研究结果表明,所分析的工具都是根据过去的反腐败程序和实践以及对腐败的常识假设进行培训的,而这些常识假设并不一定不存在不公平的不相称性和歧视。在设计反腐工具时,开发人员没有考虑到不公平的风险,也没有优先使用具体的技术解决方案来识别和缓解这类问题。尽管所分析的工具并不自动做出决定,而只是支持人的行动,但其算法并不接受外部审查。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Unfairness in AI Anti-Corruption Tools: Main Drivers and Consequences

This article discusses the potential sources and consequences of unfairness in artificial intelligence (AI) predictive tools used for anti-corruption efforts. Using the examples of three AI-based anti-corruption tools from Brazil—risk estimation of corrupt behaviour in public procurement, among public officials, and of female straw candidates in electoral contests—it illustrates how unfairness can emerge at the infrastructural, individual, and institutional levels. The article draws on interviews with law enforcement officials directly involved in the development of anti-corruption tools, as well as academic and grey literature, including official reports and dissertations on the tools used as examples. Potential sources of unfairness include problematic data, statistical learning issues, the personal values and beliefs of developers and users, and the governance and practices within the organisations in which these tools are created and deployed. The findings suggest that the tools analysed were trained using inputs from past anti-corruption procedures and practices and based on common sense assumptions about corruption, which are not necessarily free from unfair disproportionality and discrimination. In designing the ACTs, the developers did not reflect on the risks of unfairness, nor did they prioritise the use of specific technological solutions to identify and mitigate this type of problem. Although the tools analysed do not make automated decisions and only support human action, their algorithms are not open to external scrutiny.

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来源期刊
Minds and Machines
Minds and Machines 工程技术-计算机:人工智能
CiteScore
12.60
自引率
2.70%
发文量
30
审稿时长
>12 weeks
期刊介绍: Minds and Machines, affiliated with the Society for Machines and Mentality, serves as a platform for fostering critical dialogue between the AI and philosophical communities. With a focus on problems of shared interest, the journal actively encourages discussions on the philosophical aspects of computer science. Offering a global forum, Minds and Machines provides a space to debate and explore important and contentious issues within its editorial focus. The journal presents special editions dedicated to specific topics, invites critical responses to previously published works, and features review essays addressing current problem scenarios. By facilitating a diverse range of perspectives, Minds and Machines encourages a reevaluation of the status quo and the development of new insights. Through this collaborative approach, the journal aims to bridge the gap between AI and philosophy, fostering a tradition of critique and ensuring these fields remain connected and relevant.
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