Qiuxiang Shi, Associate Professor, College of Education, Hebei Normal University of Science & Technology, Qinhuangdao, Hebei Province, China;, Email:
Ning Cai, Lecturer, College of Foreign Language, Hebei Normal University of Science & Technology, Qinhuangdao, Hebei Province, China.
Am J Health Behav. 2022 Apr 20;46(2):164-176. doi: 10.5993/AJHB.46.2.6.
Our aim was to overcome the low evaluation accuracy of traditional random sampling methods for college students' mental health, and to use the values of big data of college students' social network behaviors in the prediction and evaluation of their mental health. We monitored and evaluated college students' mental health through big data analysis. After generating the samples of college students' social network behaviors, a mental health monitoring and evaluation model was established based on a support vector machine (SVM) and decision tree (DT). Then, the DT model was pruned, and input data of the model were optimized by genetic algorithm (GA). The optimal parameter combination was derived for our model. The maximum number of iterations was 60; the smallest number of samples needed for reclassifying internal nodes was 6; the number of samples with the fewest leaf nodes was 30. The mental health scores of most students fell in the interval [0, 6] for unobvious symptoms of mental crisis. The binary classification results of several models were as follows. On anxiety, all models surpassed the accuracy of 60%, except the traditional SVM. The optimal model, ie, Model 5, achieved an accuracy of 86.7%. On depression, all models exceeded the accuracy of 60%, and the GA-optimized DT 5 realized an accuracy as high as 83.1%. On drooping spirit, the optimal model, ie, GA-optimized DT 5, reached an accuracy of 89.5%, which is comparable to that of the GA-optimized SVM 4. The characteristic dimensions extracted by GA are representative. The primary mental states of college students can be estimated quickly and accurately by our model with a low cost of data storage, through the feature analysis of social network behaviors.
我们的目的是克服传统随机抽样方法对大学生心理健康评估准确性低的问题,利用大学生社交网络行为大数据的值对其心理健康进行预测和评估。我们通过大数据分析对大学生的心理健康进行监测和评估。在生成大学生社交网络行为样本后,基于支持向量机(SVM)和决策树(DT)建立了心理健康监测和评估模型。然后,对 DT 模型进行剪枝,并通过遗传算法(GA)优化模型的输入数据。得出了我们模型的最优参数组合。最大迭代次数为 60;重新分类内部节点所需的最小样本数为 6;具有最少叶节点的样本数为 30。大多数学生的心理健康得分都落在[0,6]区间内,表明他们没有明显的精神危机症状。几种模型的二分类结果如下。在焦虑方面,所有模型的准确率都超过了 60%,除了传统的 SVM。最优模型,即模型 5,准确率达到了 86.7%。在抑郁方面,所有模型的准确率都超过了 60%,GA 优化的 DT 5 实现了高达 83.1%的准确率。在精神萎靡方面,最优模型,即 GA 优化的 DT 5,准确率达到了 89.5%,与 GA 优化的 SVM 4 的准确率相当。GA 提取的特征维度具有代表性。通过我们的模型,可以快速准确地估计大学生的主要心理状态,且数据存储成本低,通过对社交网络行为的特征分析实现这一目标。