How ensembling AI and public managers improves decision-making
成果类型:
Article
署名作者:
Keppeler, Florian; Borchert, Jana; Pedersen, Mogens Jin; Lehmann Nielsen, Vibeke
署名单位:
Aarhus University; Zeppelin University; University of Copenhagen
刊物名称:
JOURNAL OF PUBLIC ADMINISTRATION RESEARCH AND THEORY
ISSN/ISSBN:
1053-1858
DOI:
10.1093/jopart/muaf009
发表日期:
2025
页码:
261-276
关键词:
in-the-loop
artificial-intelligence
street-level
INFORMATION
DISCRETION
DESIGN
BIAS
DISCRIMINATION
摘要:
Artificial intelligence (AI) applications transform public sector decision-making. However, most research conceptualizes AI as a form of specialized decision-support tool. In contrast, this study presents a different form of human-AI collaboration, the concept of human-AI ensembles, where public managers and AI tackle the same decision tasks, rather than specializing in certain subtasks. This is particularly relevant for many public sector decisions, where neither human nor AI predictions have a clear advantage over the other. We illustrate this within the context of public hiring, focusing on two key areas: (a) the potential of ensembling humans and AI to reduce biases and (b) the willingness of public managers to implement ensembling. Study 1 uses data from the assessment of profiles of real-life job candidates (n = 695) at the intersection of gender and ethnicity by public managers compared to AI. The exploratory linear regression results illustrate how ensembled decision-making may alleviate ethnic biases. The linear regression results of study 2, a preregistered survey experiment, show that public managers (n = 538 with four observations each) put equal weight on AI advice and human advice, and, when reminded of the unlawfulness of hiring discrimination, may even prioritize AI over human advice.
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