TY - JOUR
T1 - Predictive Models in Mental Health Based on Unsupervised Data Clustering
AU - Paucar, Inoc Rubio
AU - Yactayo-Arias, Cesar
AU - Andrade-Arenas, Laberiano
N1 - Publisher Copyright:
© (2025), (Science and Information Organization). All Rights Reserved.
PY - 2025
Y1 - 2025
N2 - In the university context, students’ mental health has been progressively affected over time. The objective of this research was to develop a predictive model of machine learning based on the K-Means algorithm, with the purpose of identifying and classifying mental health profiles among university students. For the construction of this model, the standard Cross-Industry Standard Process for Data Mining (CRISP-DM) methodology was applied, which encompasses five stages: business understanding, data understanding, data preparation, modeling, and evaluation. The results obtained suggest that the generated clusters produce consistent groupings in key variables such as screen time, hours of sleep, and level of physical activity, allowing the characterization of different student profiles. This approach provides valuable information for designing academic support strategies and programs aimed at students’ well-being and mental health. The early identification of behavioral patterns and lifestyle habits enables educational institutions to implement preventive and personalized measures, fostering improved academic performance and university adaptation.
AB - In the university context, students’ mental health has been progressively affected over time. The objective of this research was to develop a predictive model of machine learning based on the K-Means algorithm, with the purpose of identifying and classifying mental health profiles among university students. For the construction of this model, the standard Cross-Industry Standard Process for Data Mining (CRISP-DM) methodology was applied, which encompasses five stages: business understanding, data understanding, data preparation, modeling, and evaluation. The results obtained suggest that the generated clusters produce consistent groupings in key variables such as screen time, hours of sleep, and level of physical activity, allowing the characterization of different student profiles. This approach provides valuable information for designing academic support strategies and programs aimed at students’ well-being and mental health. The early identification of behavioral patterns and lifestyle habits enables educational institutions to implement preventive and personalized measures, fostering improved academic performance and university adaptation.
KW - Behavioral patterns
KW - clustering
KW - machine learning
KW - mental health
KW - university students
UR - https://www.scopus.com/pages/publications/105018309087
U2 - 10.14569/IJACSA.2025.0160990
DO - 10.14569/IJACSA.2025.0160990
M3 - Original Article
AN - SCOPUS:105018309087
SN - 2158-107X
VL - 16
SP - 950
EP - 962
JO - International Journal of Advanced Computer Science and Applications
JF - International Journal of Advanced Computer Science and Applications
IS - 9
ER -