Lin Wenqian, Jiang Peijie
School of Mathematics and Statistics, Hunan Normal University, Changsha 410081, China.
Behav Sci (Basel). 2025 Mar 2;15(3):295. doi: 10.3390/bs15030295.
Generative artificial intelligence (GAI) has attracted attention in education as a tool to help college students learn mathematics. This study analyzed the factors influencing their use of GAI by applying the Unified Theory of Acceptance and Use of Technology (UTAUT) and focusing on mathematics motivation. This study involved 331 Chinese college students and used partial least squares structural equation modeling (PLS-SEM) for data analysis. The results showed that college students' behavioral intention to use GAI to support their mathematics learning was directly influenced by performance expectancy, social influence, personal innovativeness, and mathematics motivation. Mathematics motivation, facilitating conditions, individual demand, and behavioral intention, had direct effects on college students' use of GAI in mathematics. The most significant factor influencing both intention and behavior was mathematics motivation. Effort expectancy and individual demand did not affect the intention to use GAI in mathematics learning. In addition, there were important positive moderating effects, including individual demand, of mathematics motivation in the structural model on usage behavior and behavioral intention regarding usage behavior. The results of this study could help to identify the key influences on college students' use of new technologies in mathematics learning and provide informative insights for the application of AI technologies in mathematics learning in the future.
生成式人工智能(GAI)作为一种帮助大学生学习数学的工具,在教育领域引起了关注。本研究应用技术接受与使用统一理论(UTAUT)并聚焦于数学学习动机,分析了影响大学生使用GAI的因素。本研究涉及331名中国大学生,并使用偏最小二乘结构方程模型(PLS-SEM)进行数据分析。结果表明,大学生使用GAI支持其数学学习的行为意向直接受到绩效期望、社会影响、个人创新性和数学学习动机的影响。数学学习动机、便利条件、个人需求和行为意向对大学生在数学学习中使用GAI有直接影响。影响意向和行为的最显著因素是数学学习动机。努力期望和个人需求并未影响大学生在数学学习中使用GAI的意向。此外,在结构模型中,数学学习动机对使用行为和使用行为的行为意向存在重要的正向调节作用,包括个人需求。本研究结果有助于确定对大学生在数学学习中使用新技术的关键影响因素,并为未来人工智能技术在数学学习中的应用提供有益的见解。