{"title":"数字健康元素在高校学生管理和教育中的挖掘与应用","authors":"Haibo Yu","doi":"10.2478/amns-2024-0599","DOIUrl":null,"url":null,"abstract":"\n This study explores the mining and application of digital health elements in higher education student management and education, refining student user profiles through data mining techniques and applying them to student management and education to improve the accuracy and effectiveness of education management. The basic process of data mining, including data cleaning, integration, selection, transformation, mining, pattern evaluation and knowledge representation, was first carried out in the study. Then, a clustering recommendation algorithm based on user characteristics was designed to construct a clustering model of user interest preferences by calculating the distance between user attributes and filling the rating matrix using rating time and item type. Then, the study constructed a student user profiling system and analyzed techniques such as fuzzy C-mean clustering, association rule algorithm and user-based collaborative filtering. The study results show that applying digital health elements in student management and education helps identify potential association patterns of students’ mental health problems. For example, in the W vocational school case study, the association rule algorithm found that the sense of learning stress and compulsion were the most frequent combinations of psychological problems among students, with support levels of 0.7451 and 0.6518, respectively. In addition, the study evaluated the effects of educational management interventions on the mental health of higher vocational students, and found that, after adopting student user profiles for educational management interventions, the experimental class students’ mental health scores for each variable were 0.602 to 1.113 points higher than those of the control class, which significantly improved the students’ psychological quality.","PeriodicalId":52342,"journal":{"name":"Applied Mathematics and Nonlinear Sciences","volume":null,"pages":null},"PeriodicalIF":3.1000,"publicationDate":"2024-01-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Mining and Application of Digital Health Elements in Higher Education Student Management and Education\",\"authors\":\"Haibo Yu\",\"doi\":\"10.2478/amns-2024-0599\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"\\n This study explores the mining and application of digital health elements in higher education student management and education, refining student user profiles through data mining techniques and applying them to student management and education to improve the accuracy and effectiveness of education management. The basic process of data mining, including data cleaning, integration, selection, transformation, mining, pattern evaluation and knowledge representation, was first carried out in the study. Then, a clustering recommendation algorithm based on user characteristics was designed to construct a clustering model of user interest preferences by calculating the distance between user attributes and filling the rating matrix using rating time and item type. Then, the study constructed a student user profiling system and analyzed techniques such as fuzzy C-mean clustering, association rule algorithm and user-based collaborative filtering. The study results show that applying digital health elements in student management and education helps identify potential association patterns of students’ mental health problems. 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引用次数: 0
摘要
本研究探索数字健康要素在高校学生管理和教育中的挖掘与应用,通过数据挖掘技术提炼学生用户画像,并应用于学生管理和教育中,提高教育管理的准确性和有效性。研究首先进行了数据挖掘的基本流程,包括数据清洗、整合、选择、转换、挖掘、模式评估和知识表示。然后,设计了基于用户特征的聚类推荐算法,通过计算用户属性间的距离,利用评分时间和项目类型填充评分矩阵,构建用户兴趣偏好聚类模型。然后,研究构建了一个学生用户特征分析系统,并分析了模糊C均值聚类、关联规则算法和基于用户的协同过滤等技术。研究结果表明,在学生管理和教育中应用数字健康元素有助于识别学生心理健康问题的潜在关联模式。例如,在 W 职业学校案例研究中,关联规则算法发现学习压力感和强迫感是学生中最常见的心理问题组合,支持度分别为 0.7451 和 0.6518。此外,该研究还评价了教育管理干预对高职学生心理健康的影响,发现采用学生用户档案进行教育管理干预后,实验班学生的心理健康各变量得分比对照班高0.602分至1.113分,学生的心理素质明显提高。
Mining and Application of Digital Health Elements in Higher Education Student Management and Education
This study explores the mining and application of digital health elements in higher education student management and education, refining student user profiles through data mining techniques and applying them to student management and education to improve the accuracy and effectiveness of education management. The basic process of data mining, including data cleaning, integration, selection, transformation, mining, pattern evaluation and knowledge representation, was first carried out in the study. Then, a clustering recommendation algorithm based on user characteristics was designed to construct a clustering model of user interest preferences by calculating the distance between user attributes and filling the rating matrix using rating time and item type. Then, the study constructed a student user profiling system and analyzed techniques such as fuzzy C-mean clustering, association rule algorithm and user-based collaborative filtering. The study results show that applying digital health elements in student management and education helps identify potential association patterns of students’ mental health problems. For example, in the W vocational school case study, the association rule algorithm found that the sense of learning stress and compulsion were the most frequent combinations of psychological problems among students, with support levels of 0.7451 and 0.6518, respectively. In addition, the study evaluated the effects of educational management interventions on the mental health of higher vocational students, and found that, after adopting student user profiles for educational management interventions, the experimental class students’ mental health scores for each variable were 0.602 to 1.113 points higher than those of the control class, which significantly improved the students’ psychological quality.