TY - JOUR
T1 - AI in academia
T2 - How do social influence, self-efficacy, and integrity influence researchers' use of AI models?
AU - Acosta-Enriquez, Benicio Gonzalo
AU - Arbulu Ballesteros, Marco
AU - Vilcapoma Pérez, César Robin
AU - Huamaní Jordan, Olger
AU - Martin Vergara, Joseph Anibal
AU - Martel Acosta, Rafael
AU - Arbulu Perez Vargas, Carmen Graciela
AU - Arbulú Castillo, Julie Catherine
N1 - Publisher Copyright:
© 2025 The Authors
PY - 2025/1
Y1 - 2025/1
N2 - 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.
AB - 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.
KW - Academic researchers
KW - Artificial intelligence
KW - Educational technology
KW - Higher education
KW - UTAUT2
UR - http://www.scopus.com/inward/record.url?scp=85213842238&partnerID=8YFLogxK
U2 - 10.1016/j.ssaho.2025.101274
DO - 10.1016/j.ssaho.2025.101274
M3 - Article
AN - SCOPUS:85213842238
SN - 2590-2911
VL - 11
JO - Social Sciences and Humanities Open
JF - Social Sciences and Humanities Open
M1 - 101274
ER -