适应性
孤独
心理学
社会心理的
人际交往
社会关系
人际关系
发展心理学
社交技能
社会心理学
生态学
精神科
生物
作者
Chuyin Xie,Minhua Ruan,Ping Lin,Zheng Wang,Tinghong Lai,Ying Xie,Shimin Fu,Hong Lu
标识
DOI:10.3390/ijerph19137890
摘要
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 (meanage = 13.89, SD = 2.22) 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 AI 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.
科研通智能强力驱动
Strongly Powered by AbleSci AI