Henriksen Anne, Blond Lasse
Aarhus University, Aarhus, Denmark.
Danish Technological Institute, Aarhus, Denmark.
Soc Stud Sci. 2023 Oct;53(5):738-760. doi: 10.1177/03063127231163756. Epub 2023 May 8.
Recent policies and research articles call for turning AI into a form of IA ('intelligence augmentation'), by envisioning systems that center on and enhance humans. Based on a field study at an AI company, this article studies how AI is performed as developers enact two predictive systems along with stakeholders in public sector accounting and public sector healthcare. Inspired by STS theories about values in design, we analyze our empirical data focusing especially on how objectives, structured performances, and divisions of labor are built into the two systems and at whose expense. Our findings reveal that the development of the two AI systems is informed by politically motivated managerial interests in cost-efficiency. This results in AI systems that are (1) designed as managerial tools meant to enable efficiency improvements and cost reductions, and (2) enforced on professionals on the 'shop floor' in a top-down manner. Based on our findings and a discussion drawing on literature on the original visions of human-centered systems design from the 1960s, we argue that turning AI into IA seems dubious, and ask what human-centered AI really means and whether it remains an ideal not easily realizable in practice. More work should be done to rethink human-machine relationships in the age of big data and AI, in this way making the call for ethical and responsible AI more genuine and trustworthy.
近期的政策和研究文章呼吁通过设想以人类为中心并增强人类能力的系统,将人工智能转变为一种智能增强(IA)形式。基于对一家人工智能公司的实地研究,本文探讨了在公共部门会计和公共部门医疗保健领域,随着开发者与利益相关者共同构建两个预测系统,人工智能是如何得以应用的。受科学技术与社会(STS)关于设计中价值观的理论启发,我们分析实证数据,特别关注两个系统中目标、结构化性能和劳动分工是如何构建的,以及以谁的利益为代价。我们的研究结果表明,这两个人工智能系统的开发受到出于政治动机的管理层对成本效率的关注影响。这导致人工智能系统:(1)被设计为旨在提高效率和降低成本的管理工具;(2)以自上而下的方式强加给“基层”专业人员。基于我们的研究结果以及借鉴20世纪60年代以人为本的系统设计原始愿景的文献进行的讨论,我们认为将人工智能转变为智能增强似乎值得怀疑,并质疑以人为本的人工智能真正意味着什么,以及它在实践中是否仍然是一个难以实现的理想。在大数据和人工智能时代,应该做更多工作来重新思考人机关系,从而使对符合道德和负责任的人工智能的呼吁更加真诚和可信。