AI in academia: How do social influence, self-efficacy, and integrity influence researchers' use of AI models?

Benicio Gonzalo Acosta-Enriquez , Marco Arbulu Ballesteros , César Robin Vilcapoma Pérez , Olger Huamaní Jordan , Joseph Anibal Martin Vergara , Rafael Martel Acosta , Carmen Graciela Arbulu Perez Vargas , Julie Catherine Arbulú Castillo
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Abstract

The integration of artificial intelligence models into academic settings has experienced remarkable growth in recent years. Given that researchers' interactions with and perceptions of these technologies can substantially influence academic procedures and outputs, identifying the key determinants of their incorporation into university environments is crucial. This investigation pursued two main objectives: first, to identify the variables that condition the implementation of AI models in research activities, and second, to analyze how perceived ethical considerations and academic integrity influence their adoption. The empirical study was conducted through a digital survey administered to 302 academic researchers from Peruvian public and private universities. The analytical methodology employed structural equation modeling and confirmatory factor analysis, grounded in an expanded version of the Unified Theory of Acceptance and Use of Technology 2 model. The results demonstrated that six out of nine hypotheses were supported; social influence, educational self-efficacy, and academic integrity were identified as primary factors predicting researchers' use of AI models. Effort expectancy had a significant negative effect on AI model use. Furthermore, the use of AI models was found to significantly influence both teachers' concerns and perceived ethics among academics. Notably, performance expectancy, technological self-efficacy, and personal anxiety did not significantly affect AI model use. This study contributes to the understanding of AI adoption in academic research by highlighting the importance of social, educational, and ethical factors. These findings have implications for developing policies and training programs to promote responsible AI use in higher education and suggest a need to reevaluate traditional technology acceptance models in the context of AI in academia.
学术界的人工智能:社会影响力、自我效能和诚信如何影响研究人员对人工智能模型的使用?
近年来,人工智能模型与学术环境的整合经历了显着的增长。鉴于研究人员与这些技术的相互作用和对这些技术的看法可以实质性地影响学术程序和产出,确定将这些技术纳入大学环境的关键决定因素至关重要。这项调查有两个主要目标:首先,确定影响人工智能模型在研究活动中实施的变量,其次,分析感知到的伦理考虑和学术诚信如何影响它们的采用。实证研究是通过对来自秘鲁公立和私立大学的302名学术研究人员进行的数字调查进行的。分析方法采用结构方程建模和验证性因素分析,以技术接受和使用统一理论2模型的扩展版本为基础。结果表明,9个假设中有6个得到了支持;社会影响力、教育自我效能感和学术诚信被确定为预测研究人员使用人工智能模型的主要因素。努力预期对人工智能模型的使用有显著的负面影响。此外,研究发现人工智能模型的使用显著影响了教师的关注点和学术界的道德观念。值得注意的是,绩效预期、技术自我效能和个人焦虑对人工智能模型的使用没有显著影响。这项研究通过强调社会、教育和伦理因素的重要性,有助于理解人工智能在学术研究中的应用。这些发现对制定政策和培训计划以促进高等教育中负责任的人工智能使用具有重要意义,并建议需要在学术界人工智能背景下重新评估传统技术接受模型。
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
Social sciences & humanities open
Social sciences & humanities open Psychology (General), Decision Sciences (General), Social Sciences (General)
CiteScore
4.20
自引率
0.00%
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0
审稿时长
159 days
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