School of Education, Guangzhou University, Guangzhou 510006, China.
Management Center for Quality Education of Baiyun District, Guangzhou 510080, China.
Int J Environ Res Public Health. 2022 Jun 27;19(13):7890. doi: 10.3390/ijerph19137890.
This study aimed to investigate the influence of artificial intelligence in education (AIEd) on adolescents' social adaptability, as well as to identify the relevant psychosocial factors that can predict adolescents' social adaptability. A total of 1328 participants (mean = , SD = ) completed the survey. A machine-learning algorithm was used to find out whether AIEd may influence adolescents' social adaptability as well as the relevant psychosocial variables, such as teacher-student relations, peer relations, interparental relations, and loneliness that may be significantly related to social adaptability. Results showed that it has a positive influence of AIEd on adolescents' social adaptability. In addition, the four most important factors in the prediction of social adaptability among group students are interpersonal relationships, peer relations, academic emotion, and loneliness. A high level of interpersonal relationships and peer relations can predict a high level of social adaptability among the AI group students, while a high level of academic emotion and loneliness can predict a low level of social adaptability. Overall, the findings highlight the need to focus interventions according to the relation between these psychosocial factors and social adaptability in order to increase the positive influence of AIEd and promote the development of social adaptability.
本研究旨在探讨人工智能在教育(AIEd)对青少年社会适应能力的影响,以及确定可预测青少年社会适应能力的相关心理社会因素。共有 1328 名参与者(平均值=,标准差=)完成了调查。使用机器学习算法来确定 AIEd 是否可能影响青少年的社会适应能力,以及可能与社会适应能力显著相关的相关心理社会变量,例如师生关系、同伴关系、亲子关系和孤独感。结果表明,AIEd 对青少年的社会适应能力有积极影响。此外,在预测 AI 组学生社会适应能力的四个最重要因素是人际关系、同伴关系、学业情感和孤独感。高水平的人际关系和同伴关系可以预测 AI 组学生的高社会适应能力,而高水平的学业情感和孤独感可以预测低社会适应能力。总的来说,研究结果强调需要根据这些心理社会因素与社会适应能力之间的关系进行干预,以提高 AIEd 的积极影响,促进社会适应能力的发展。