Ma Youzhong, Zhang Ruiling, Zhang Yongxin
Luoyang Normal University, No.6, Jiqing Road, Yibin District, Luoyang, 471934, Henan, China.
Henan key Laboratory for Big Data Processing & Analytics of Electronic Commerce, No.6, Jiqing Road, Yibin District, Luoyang, 471934, Henan, China.
Heliyon. 2022 Aug 28;8(8):e10443. doi: 10.1016/j.heliyon.2022.e10443. eCollection 2022 Aug.
Pubertal timing and social adaptability are important research contents of adolescent mental health education. Traditional research methods mainly classify students based on the total score or average score of the scale, although this kind of method is simple easy to conduct, it can't make a more detailed analysis of the students. In this paper, data mining methods such as association rules and clustering are used to analyze the data of pubertal timing and social adaptability scale, some novel and meaningful conclusions are figured out from the analysis results that can't be obtained by the previous methods, and the analysis results are visualized to enhance readability. Association rule mining on basic attributes information, the pubertal timing group and the social adaptability levels were performed which can explore the relationship between the basic attributes information of the students, pubertal timing and the social adaptability. Fine-grained analysis of social adaptability by using clustering method was conducted which can divide the similar students into the same groups that is very useful for teachers to have a more in-depth, accurate and detailed understanding of students, make sure that the better classification can be obtained compared with the traditional analysis approaches. The work of this paper provides an effective guidance and a novel perspective for how to use data mining technologies to study the pubertal timing and social adaptability problems.
青春期发育时间和社会适应能力是青少年心理健康教育的重要研究内容。传统研究方法主要根据量表总分或平均分对学生进行分类,这种方法虽然简单易行,但无法对学生进行更细致的分析。本文运用关联规则和聚类等数据挖掘方法对青春期发育时间和社会适应能力量表数据进行分析,从分析结果中得出了一些以往方法无法获得的新颖且有意义的结论,并将分析结果可视化以提高可读性。对基本属性信息、青春期发育时间组和社会适应能力水平进行关联规则挖掘,可探索学生基本属性信息、青春期发育时间与社会适应能力之间的关系。利用聚类方法对社会适应能力进行细粒度分析,可将相似学生分为同一组,这对教师更深入、准确、细致地了解学生非常有用,确保与传统分析方法相比能获得更好的分类效果。本文的工作为如何运用数据挖掘技术研究青春期发育时间和社会适应能力问题提供了有效指导和新颖视角。