Analysis of mental health influencing factors and students’ psychological education countermeasures based on ID3 algorithm

Hongfeng Li
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Abstract

Abstract This paper utilizes the data mining decision tree ID3 algorithm to improve the traditional ID3 algorithm, exclude the influence of other factors, and realize the decision tree ID3 algorithm by using the data mining decision tree ID3 algorithm in the database of college students’ mental health assessment in the application of mental health assessment in colleges and universities as an example. Among them, the number of nodes, the number of rules, the classification accuracy and the time of constructing the decision tree of the algorithm are compared to verify the improvement effect of the ID3 algorithm. The target dataset consists of psychological assessment data of students, which includes their basic situation and nine-dimensional psychological symptoms. Analyze the recorded data of students’ mental health status, extract the information on personality, parental relationship, economic income, and psychological abnormality, set the decision tree analysis variables, assign the value of students’ health status, and derive the specific factors affecting students’ mental health by using the decision tree If-Then classification rules. The validation results show that the generated decision tree ID3 model cross-validation estimate is 0.261, the standard error is 0.016, and its obtained standard error is less than 0.018, which indicates that the model fits better.
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基于ID3算法的心理健康影响因素及学生心理教育对策分析
摘要本文利用数据挖掘决策树ID3算法对传统的ID3算法进行改进,排除其他因素的影响,并以数据挖掘决策树ID3算法在大学生心理健康评估数据库中的应用在高校心理健康评估中的应用为例,实现决策树ID3算法。其中比较了算法的节点数、规则数、分类精度和构建决策树的时间,验证了ID3算法的改进效果。目标数据集由学生的心理评估数据组成,包括学生的基本情况和九维心理症状。对学生心理健康状况记录数据进行分析,提取性格、父母关系、经济收入、心理异常等信息,设置决策树分析变量,赋值学生健康状况,利用决策树If-Then分类规则推导出影响学生心理健康的具体因素。验证结果表明,生成的决策树ID3模型交叉验证估计值为0.261,标准误差为0.016,得到的标准误差小于0.018,表明模型拟合较好。
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来源期刊
Applied Mathematics and Nonlinear Sciences
Applied Mathematics and Nonlinear Sciences Engineering-Engineering (miscellaneous)
CiteScore
2.90
自引率
25.80%
发文量
203
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