AI advocates and cautious critics: How AI attitudes, AI interest, use of AI, and AI literacy build university students' AI self-efficacy

Q1 Social Sciences Computers and Education Artificial Intelligence Pub Date : 2025-06-01 Epub Date: 2024-12-06 DOI:10.1016/j.caeai.2024.100340
Arne Bewersdorff , Marie Hornberger , Claudia Nerdel , Daniel S. Schiff
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Abstract

This study investigates how cognitive, affective, and behavioral variables related to artificial intelligence (AI) build AI self-efficacy among university students. Based on these variables, we identify three meaningful student groups, which can guide educational initiatives. We recruited 1465 undergraduate and graduate students from the United States, the United Kingdom, and Germany and measured their AI self-efficacy, AI literacy, interest in AI, attitudes towards AI, and AI use. Using a path model, we examine the correlations and paths among these variables. Results reveal that AI usage and positive AI attitudes significantly predict interest in AI, which in turn and together with AI literacy, enhance AI self-efficacy. Moreover, using Gaussian Mixture Models, we identify three groups of students: 'AI Advocates,' 'Cautious Critics,' and 'Pragmatic Observers,' each exhibiting unique patterns of AI-related cognitive, affective, and behavioral traits. Our findings demonstrate the necessity of educational strategies that not only focus on AI literacy but also aim to foster students' AI attitudes, usage, and interest to effectively promote AI self-efficacy. Furthermore, we argue that educators who aim to design inclusive AI educational programs should take into account the distinct needs of different student groups identified in this study.
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人工智能的倡导者和谨慎的批评者:人工智能态度、人工智能兴趣、人工智能使用和人工智能素养如何构建大学生的人工智能自我效能感
本研究探讨与人工智能(AI)相关的认知、情感和行为变量如何在大学生中构建AI自我效能感。基于这些变量,我们确定了三个有意义的学生群体,它们可以指导教育活动。我们从美国、英国和德国招募了1465名本科生和研究生,并测量了他们的人工智能自我效能感、人工智能素养、对人工智能的兴趣、对人工智能的态度和人工智能的使用。使用路径模型,我们检查这些变量之间的相关性和路径。结果显示,人工智能的使用和积极的人工智能态度显著地预测了人们对人工智能的兴趣,这反过来又与人工智能素养一起增强了人工智能的自我效能感。此外,使用高斯混合模型,我们确定了三组学生:“人工智能倡导者”、“谨慎批评者”和“务实观察者”,每组学生都表现出与人工智能相关的认知、情感和行为特征的独特模式。我们的研究结果表明,教育策略的必要性不仅关注人工智能素养,还旨在培养学生对人工智能的态度、使用和兴趣,以有效提高人工智能自我效能感。此外,我们认为,旨在设计包容性人工智能教育计划的教育工作者应该考虑到本研究中确定的不同学生群体的不同需求。
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来源期刊
CiteScore
16.80
自引率
0.00%
发文量
66
审稿时长
50 days
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