Construction of a machine learning-based model for stratified assessment of college students’ mental health and design of intervention pathways
Mar 19, 2025
About this article
Published Online: Mar 19, 2025
Received: Nov 07, 2024
Accepted: Feb 18, 2025
DOI: https://doi.org/10.2478/amns-2025-0476
Keywords
© 2025 Jie Gao, published by Sciendo
This work is licensed under the Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International License.
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Figure 5.

Mental health assessment index system
Target layer | Characteristic layer | Basic layer |
---|---|---|
Characteristic index system | Personal factor | Life sense |
Neuroticism | ||
Quality of sleep | ||
Self-evaluation | ||
Health pressure | ||
Sense of sense | ||
Life attitude | ||
favourability | ||
Extroversion | ||
Life goal | ||
Family factor | Family pressure | |
Relationship pressure | ||
Career pressure | ||
Frustration pressure | ||
School factor | School environmental pressure | |
Interpersonal pressure | ||
Academic pressure | ||
openness |
Confusion matrix
Actual result | Predictive result | |
---|---|---|
1 (positive) | 0 (non-positive) | |
1 (positive) | 54 | 4 |
0 (non-positive) | 5 | 102 |
Performance data
Model | Accuracy rate(%) | Accuracy rate(%) | Recall rate(%) | F1(%) | AUC |
---|---|---|---|---|---|
RF | 82.47 | 64.96 | 70.37 | 73.79 | 0.9056 |
SVM | 83.11 | 79.17 | 70.37 | 74.51 | 0.9067 |
XGBoost | 85.71 | 80.77 | 77.78 | 79.25 | 0.9148 |
Model of this article | 90.18 | 92.84 | 92.73 | 94.16 | 0.9154 |