Jacobo Roda-Segarra, Cristina de-la-Peña, Santiago Mengual-Andrés
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引用次数: 0
摘要
辍学是各国教育系统都十分关注的问题。近年来,人工智能在预测正规教育不同教育阶段的辍学率方面发挥着重要作用。在这种情况下,了解这些预测的准确性和可理解性至关重要。这项元分析研究旨在调查截至 2022 年 5 月的辍学预测模型的有效性。使用的数据库包括 Web of Science、Scopus、PubMed、ERIC、PsyInfo、Dialnet 和 Scielo。共分析了 15 项研究,样本量为 199 015 人。荟萃分析采用随机效应比例模型,置信区间为 95%。统计证据表明,人工智能模型在预测辍学率方面表现良好(91%;95% CI = 89-93%);具体而言,决策树模型对辍学率的预测效果显著(95.3%;95% CI = 93-98%),优于随机森林、人工神经网络、支持向量机、逻辑回归和堆叠集合等其他模型。因此,应在辍学领域应用更多的模型和更多的参与者,以证实这些发现并提高教育质量。
Effectiveness of Artificial Intelligence Models for Predicting School Dropout: A Meta-Analysis
School dropout is a major concern in the educational systems of all countries. In recent years, artificial intelligence is playing an important role in predicting school dropout in the different educational stages of formal education. In this context, it is crucial to know that these predictions are accurate and understandable. This meta-analytic study aims to investigate the effectiveness of dropout prediction models conducted until May 2022. The databases used are Web of Science, Scopus, PubMed, ERIC, PsyInfo, Dialnet and Scielo. 15 studies with a sample size of 199,015 participants are analyzed. The meta-analysis uses a random-effects proportions model with 95% confidence interval. Statistical evidence indicates that artificial intelligence models performed well (91%; 95% CI = 89-93%) in predicting dropout; specifically, the Decision Tree model significantly (95.3%; 95% CI = 93-98%) predicts dropout better than other models such as Random Forest, Artificial Neural Network, Support Vector Machines, Logistic Regression and Stacking Ensemble. Consequently, more models should be applied in the dropout field with larger numbers of participants to confirm these findings and improve the quality of education.