Citizens’ intention to follow recommendations from a government-supported AI-enabled system

IF 2.9 4区 管理学 Q1 PUBLIC ADMINISTRATION
Yi-Fan Wang, Yu-Che Chen, S. Chien
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引用次数: 1

Abstract

Artificial intelligence (AI) applications in public services are an emerging and crucial issue in the modern world. Many countries utilize AI-enabled systems to serve citizens and deliver public services. Although AI can bring more efficiency and responsiveness, this technology raises privacy and social inequality concerns. From the perspective of behavioral public administration (BPA), citizens’ use of AI-enabled systems depends on their perception of this technology. This study proposes a conceptual framework connecting citizens’ perceptions, trust, and intention to follow instructions from the government-supported AI-enabled recommendation system in the pandemic. Our study launches an online-based experimental survey and analyzes the data with the partial least square structural equation model (PLS-SEM). The research findings suggest that algorithmic transparency increases trust in the recommendations, but privacy concerns decrease the trust when the system asks for sensitive information. Additionally, citizens familiar with technologies are more likely to trust the recommendations in the feature-based communication strategy. Finally, trust in the recommendations can mediate the impacts of citizens’ perceptions of the AI system. This study clarifies the effects of perceptions, identifies the role of trust, and explores the communication strategies in citizens’ intention to follow the AI-enabled system recommendations. The results can deepen AI research in public administration and provide policy suggestions for the public sector to develop strategies to increase policy compliance with system recommendations.
公民有意遵循政府支持的人工智能系统的建议
人工智能在公共服务中的应用是现代世界中一个新兴的关键问题。许多国家利用人工智能系统为公民服务并提供公共服务。尽管人工智能可以带来更高的效率和响应能力,但这项技术引发了人们对隐私和社会不平等的担忧。从行为公共管理(BPA)的角度来看,公民对人工智能系统的使用取决于他们对这项技术的看法。这项研究提出了一个概念框架,将公民的感知、信任和在疫情中遵循政府支持的人工智能推荐系统指示的意图联系起来。我们的研究启动了一项基于在线的实验调查,并用偏最小二乘结构方程模型(PLS-SEM)对数据进行了分析。研究结果表明,算法透明度增加了对推荐的信任,但当系统要求提供敏感信息时,隐私问题会降低信任。此外,熟悉技术的公民更有可能相信基于特征的沟通策略中的建议。最后,对建议的信任可以调节公民对人工智能系统的看法所产生的影响。本研究阐明了感知的影响,确定了信任的作用,并探讨了公民遵循人工智能系统建议的沟通策略。研究结果可以深化公共行政中的人工智能研究,并为公共部门制定战略以提高政策对系统建议的遵守程度提供政策建议。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Public Policy and Administration
Public Policy and Administration PUBLIC ADMINISTRATION-
CiteScore
11.30
自引率
6.50%
发文量
18
审稿时长
12 weeks
期刊介绍: Public Policy and Administration is the journal of the UK Joint University Council (JUC) Public Administration Committee (PAC). The journal aims to publish original peer-reviewed material within the broad field of public policy and administration. This includes recent developments in research, scholarship and practice within public policy, public administration, government, public management, administrative theory, administrative history, and administrative politics. The journal seeks to foster a pluralistic approach to the study of public policy and administration. International in readership, Public Policy and Administration welcomes submissions for anywhere in the world, from both academic and practitioner communities.
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