TY - JOUR
T1 - Emotional development in postgraduate students through the application of machine learning
AU - Moreira-Choez, Jenniffer Sobeida
AU - Villota-Oyarvide, Wellington Remigio
AU - Meza-Arguello, Danny Meliton
AU - Valdés-Cabodevilla, Regla Cristina
AU - Loor-Rivadeneira, Marlene Ruth Elena
AU - Mendoza-Fernández, Verónica Monserrate
AU - Lapo-Palacios, Miguel Ángel
AU - Sabando-García, Angel Ramón
N1 - Publisher Copyright:
Copyright © 2025 Moreira-Choez, Villota-Oyarvide, Meza-Arguello, Valdés-Cabodevilla, Loor-Rivadeneira, Mendoza-Fernández, Lapo-Palacios and Sabando-García.
PY - 2025
Y1 - 2025
N2 - Introduction: Emotional development is a central component in the academic formation and well-being of students, particularly at the postgraduate level, where academic, professional, and personal demands are considerable. This study aimed to analyze the emotional development of postgraduate students at the State University of Milagro through the application of machine learning. Methodology: The approach was quantitative, with a non-experimental and cross-sectional design. The TMMS-24 scale was employed to measure perceived emotional intelligence across dimensions such as attention, clarity, and emotional regulation. The sample, composed of 1,412 participants, was analyzed using various machine learning models, including AdaBoost, Random Forest, SVM, logistic regression, and KNN, evaluated through metrics such as AUC, accuracy, and recall. Results: AdaBoost and Random Forest were the most effective models, with AUC values of 0.996 and 0.972, respectively. AdaBoost achieved the highest F1-score (0.974), while Random Forest reached perfect recall (1.000) in students over 30. Both models showed strong predictive capacity across age groups. In contrast, logistic regression and SVM displayed limited performance, with AUCs below 0.56. These results confirm the superiority of ensemble methods in modeling emotional patterns. Conclusion: It is concluded that ensemble algorithms such as AdaBoost and Random Forest are effective tools for analyzing emotions in educational contexts. However, the study’s scope was restricted to an academic setting. As a practical implication, the findings support the integration of emotionally focused interventions in higher education programs to enhance students’ emotional development according to their specific needs.
AB - Introduction: Emotional development is a central component in the academic formation and well-being of students, particularly at the postgraduate level, where academic, professional, and personal demands are considerable. This study aimed to analyze the emotional development of postgraduate students at the State University of Milagro through the application of machine learning. Methodology: The approach was quantitative, with a non-experimental and cross-sectional design. The TMMS-24 scale was employed to measure perceived emotional intelligence across dimensions such as attention, clarity, and emotional regulation. The sample, composed of 1,412 participants, was analyzed using various machine learning models, including AdaBoost, Random Forest, SVM, logistic regression, and KNN, evaluated through metrics such as AUC, accuracy, and recall. Results: AdaBoost and Random Forest were the most effective models, with AUC values of 0.996 and 0.972, respectively. AdaBoost achieved the highest F1-score (0.974), while Random Forest reached perfect recall (1.000) in students over 30. Both models showed strong predictive capacity across age groups. In contrast, logistic regression and SVM displayed limited performance, with AUCs below 0.56. These results confirm the superiority of ensemble methods in modeling emotional patterns. Conclusion: It is concluded that ensemble algorithms such as AdaBoost and Random Forest are effective tools for analyzing emotions in educational contexts. However, the study’s scope was restricted to an academic setting. As a practical implication, the findings support the integration of emotionally focused interventions in higher education programs to enhance students’ emotional development according to their specific needs.
KW - emotional intelligence
KW - ensemble algorithms
KW - higher education
KW - machine learning
KW - predictive analysis
UR - https://www.scopus.com/pages/publications/105016636902
U2 - 10.3389/feduc.2025.1592676
DO - 10.3389/feduc.2025.1592676
M3 - Artículo
AN - SCOPUS:105016636902
SN - 2504-284X
VL - 10
JO - Frontiers in Education
JF - Frontiers in Education
M1 - 1592676
ER -