Machine learning-driven analysis of academic performance determinants: Geographic, socio-demographic, and subject-specific influences in Somaliland's 2022–2023 national primary examinations

Q1 Social Sciences
Jibril Abdulkadir Ali , Abdisalan Hassan Muse , Mustafe Khadar Abdi , Tawakal Abdi Ali , Yahye Hassan Muse , Mukhtaar Axmed Cumar
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Abstract

This study examined factors influencing academic performance among primary school students in Somaliland. It utilizes data from 20,638 students who participated in the 2022–2023 national primary examination. The research employed a combination of machine learning algorithms and traditional regression methods to investigate subject-specific, socio-demographic, and geographic influences on achievement performance. The findings indicate that proficiency in mathematics and science are the strongest predictors of academic success. Performance exhibits significant variation by location, school type, and region. Urban students demonstrate superior performance compared to their rural counterparts, and private school students outperform those in public schools. Among the machine learning models evaluated, the Support Vector model proves the most effective for predicting outcomes, with an RMSE of 43.23 and MAE of 33.71. The regression model accounts for 77.9 % of the variance in performance, demonstrating the robustness of the predictors. This study highlights the inevitability for battered involvements to enhance STEM education and mitigate inequalities. It also underlines the potential of integrating machine learning with traditional analysis in resource-limited settings. These understandings can inform policymakers and educators in improving equity and quality in Somaliland's education system, thereby improving progress toward Sustainable Development Goal 4.1.
学习成绩决定因素的机器学习驱动分析:索马里兰2022-2023年全国小学考试中的地理、社会人口和特定学科影响
本研究旨在探讨影响索马利兰小学生学业表现的因素。它利用了参加2022-2023年全国小学考试的20638名学生的数据。该研究结合了机器学习算法和传统回归方法来调查特定学科、社会人口统计学和地理因素对成就表现的影响。研究结果表明,精通数学和科学是学业成功的最强预测因素。表现因地点、学校类型和地区而有显著差异。城市学生的表现优于农村学生,私立学校学生的表现优于公立学校学生。在评估的机器学习模型中,支持向量模型被证明是最有效的预测结果,RMSE为43.23,MAE为33.71。回归模型解释了77.9%的性能方差,证明了预测因子的稳健性。这项研究强调了加强STEM教育和减轻不平等现象的必要性。它还强调了在资源有限的环境中将机器学习与传统分析相结合的潜力。这些认识可以为政策制定者和教育工作者提供信息,以提高索马里兰教育系统的公平性和质量,从而加快实现可持续发展目标4.1的进展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
8.90
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0.00%
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审稿时长
69 days
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