Ba-Aoum Mohammed, Alrezq Mohammed, Datta Jyotishka, Triantis Konstantinos P
Department of Industrial and Systems Engineering, Virginia Tech, Blacksburg, VA, United States.
Department of Industrial and Systems Engineering, King Fahd University of Petroleum and Minerals, Dhahran, Saudi Arabia.
Front Big Data. 2024 Dec 13;7:1449572. doi: 10.3389/fdata.2024.1449572. eCollection 2024.
Self-efficacy is a critical determinant of students' academic success and overall life outcomes. Despite its recognized importance, research on predictors of self-efficacy using machine learning models remains limited, particularly within Muslim societies. This study addresses this gap by leveraging advanced machine learning techniques to analyze key factors influencing students' self-efficacy.
An empirical dataset collected was used to examine self-efficacy among secondary school students in Muslim societies. Four machine learning algorithms-Decision Tree, Random Forest, XGBoost, and Neural Network-were employed to predict self-efficacy using two demographic variables and 10 socio-emotional, cognitive, and regulatory factors. The predictors included culturally relevant variables such as religious/spiritual beliefs and collectivist-individualist orientation. Model performance was assessed using root mean square error (RMSE) and r-squared ( ) metrics to ensure reliability and validity.
The results showed that Random Forest outperformed the other models in accuracy, as measured by and RMSE metrics. Among the predictors, self-regulation, problem-solving, and a sense of belonging emerged as the most significant factors, contributing to more than half of the model's predictive power. Other variables such as gratitude, forgiveness, empathy, and meaning-making displayed moderate predictive value, while gender, emotion regulation, and collectivist-individualist orientation had minimal impact. Notably, religious/spiritual beliefs and regional factors showed negligible influence on self-efficacy predictions.
This study enhances the understanding of factors influencing self-efficacy among students in Muslim societies and offers a data-driven foundation for developing targeted educational interventions. The findings highlight the utility of machine learning in education research, demonstrating its ability to uncover insights for equitable and effective decision-making. By emphasizing the importance of regulatory and socio-emotional factors, this research provides actionable insights to elevate student performance and well-being in diverse cultural contexts.
自我效能感是学生学业成功和整体生活成就的关键决定因素。尽管其重要性已得到认可,但利用机器学习模型对自我效能感预测因素的研究仍然有限,尤其是在穆斯林社会中。本研究通过利用先进的机器学习技术来分析影响学生自我效能感的关键因素,填补了这一空白。
使用收集到的实证数据集来考察穆斯林社会中中学生的自我效能感。采用四种机器学习算法——决策树、随机森林、XGBoost和神经网络——利用两个人口统计学变量以及10个社会情感、认知和调节因素来预测自我效能感。预测变量包括与文化相关的变量,如宗教/精神信仰和集体主义-个人主义取向。使用均方根误差(RMSE)和r平方( )指标评估模型性能,以确保可靠性和有效性。
结果表明,以 和RMSE指标衡量,随机森林在准确性方面优于其他模型。在预测变量中,自我调节、解决问题的能力和归属感是最重要的因素,对模型预测能力的贡献超过一半。感恩、宽恕、同理心和意义建构等其他变量显示出中等的预测价值,而性别、情绪调节和集体主义-个人主义取向的影响最小。值得注意的是,宗教/精神信仰和地区因素对自我效能感预测的影响微乎其微。
本研究增进了对穆斯林社会中影响学生自我效能感因素的理解,并为制定有针对性的教育干预措施提供了数据驱动的基础。研究结果突出了机器学习在教育研究中的效用,证明了其揭示公平有效决策见解的能力。通过强调调节和社会情感因素的重要性,本研究提供了可操作的见解,以提高不同文化背景下学生的成绩和幸福感。