No Thanks, Dear AI! Understanding the Effects of Disclosure and Deployment of Artificial Intelligence in Public Sector Recruitment

IF 5.2 1区 管理学 Q1 POLITICAL SCIENCE Journal of Public Administration Research and Theory Pub Date : 2023-05-20 DOI:10.1093/jopart/muad009
Florian Keppeler
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Abstract

Abstract Applications based on artificial intelligence (AI) play an increasing role in the public sector and invoke political discussions. Research gaps exist regarding the disclosure effects—reactions to disclosure of the use of AI applications—and the deployment effect—efficiency gains in data savvy tasks. This study analyzes disclosure effects and explores the deployment of an AI application in a preregistered field experiment (n = 2,000) co-designed with a public organization in the context of employer-driven recruitment. The linear regression results show that disclosing the use of the AI application leads to significantly less interest in an offer among job candidates. The explorative analysis of the deployment of the AI application indicates that the person–job fit determined by the leaders can be predicted by the AI application. Based on the literature on algorithm aversion and digital discretion, this study provides a theoretical and empirical disentanglement of the disclosure effect and the deployment effect to inform future evaluations of AI applications in the public sector. It contributes to the understanding of how AI applications can shape public policy and management decisions, and discusses the potential benefits and downsides of disclosing and deploying AI applications in the public sector and in employer-driven recruitment.
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不,谢谢,亲爱的AI!了解人工智能在公共部门招聘中的披露和部署的影响
基于人工智能(AI)的应用在公共部门发挥着越来越大的作用,并引发了政治讨论。关于披露效果(对使用人工智能应用程序的披露的反应)和部署效果(在精通数据的任务中提高效率)的研究存在差距。本研究分析了披露效应,并探讨了人工智能应用程序在雇主驱动招聘背景下与公共组织共同设计的预注册现场实验(n = 2000)中的部署。线性回归结果显示,披露使用人工智能应用程序会导致求职者对工作机会的兴趣显著降低。对人工智能应用部署的探索性分析表明,人工智能应用可以预测领导者确定的人-职契合度。基于算法厌恶和数字自由裁量权的文献,本研究提供了披露效应和部署效应的理论和实证解耦,为未来评估人工智能在公共部门的应用提供信息。它有助于理解人工智能应用如何影响公共政策和管理决策,并讨论在公共部门和雇主驱动的招聘中披露和部署人工智能应用的潜在好处和缺点。
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来源期刊
CiteScore
8.50
自引率
11.90%
发文量
46
期刊介绍: The Journal of Public Administration Research and Theory serves as a bridge between public administration or public management scholarship and public policy studies. The Journal aims to provide in-depth analysis of developments in the organizational, administrative, and policy sciences as they apply to government and governance. Each issue brings you critical perspectives and cogent analyses, serving as an outlet for the best theoretical and research work in the field. The Journal of Public Administration Research and Theory is the official journal of the Public Management Research Association.
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