使用深度集成学习预测学生的表现。

IF 2.8 3区 心理学 Q1 PSYCHOLOGY, MULTIDISCIPLINARY Journal of Intelligence Pub Date : 2024-12-03 DOI:10.3390/jintelligence12120124
Bo Tang, Senlin Li, Changhua Zhao
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引用次数: 0

摘要

大学和学校在很大程度上依赖于预测学生表现的能力,因为这使他们能够制定有效的策略来提高学习成绩并避免学生流失。由技术增强的学习工具生成的过程自动化和大型数据集的管理可以促进这些数据的分析和处理,这为了解学生的知识和他们对学术努力的参与提供了重要的见解。正在考虑的方法旨在通过深度神经网络的集合来预测学生的学习成绩。该方法在现有方法的基础上提出了一种新的特征排序机制。这种机制在识别最相关的特征及其与学生学习成绩的相关性方面是有效的。该方法采用一种优化策略,在集成系统中同时配置和训练深度神经网络。此外,所提出的集成模型在其学习组件之间使用加权投票以获得更准确的预测。简而言之,建议的方法不仅通过采用加权集成技术,而且通过优化深度学习模型的参数,提高了学生学习成绩预测的准确性。这些实验结果证明,该方法优于其他方法,准确预测学生成绩,均方根误差(RMSE)值为1.66,平均绝对百分比误差(MAPE)值为9.75,r平方值为0.7430。这些结果表明,与零模型(RMSE = 4.05, MAPE = 24.89, r²= 0.2897)相比,有了显著的改进,并证明了所提出方法中采用的技术的效率。
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Predicting the Performance of Students Using Deep Ensemble Learning.

Universities and schools rely heavily on the ability to forecast student performance, as it enables them to develop efficient strategies for enhancing academic results and averting student attrition. The automation of processes and the management of large datasets generated by technology-enhanced learning tools can facilitate the analysis and processing of these data, which provides crucial insights into the knowledge of students and their engagement with academic endeavors. The method under consideration aims to forecast the academic achievement of students through an ensemble of deep neural networks. The proposed method presents a new feature-ranking mechanism based on existing approaches. This mechanism is effective in identifying the most pertinent features and their correlation with the academic performance of students. The proposed method employs an optimization strategy to concurrently configure and train the deep neural networks within our ensemble system. Furthermore, the proposed ensemble model uses weighted voting among its learning components for more accurate prediction. Put simply, the suggested approach enhances the accuracy of academic performance predictions for students not only by employing weighted ensemble techniques, but also by optimizing the parameters of deep learning models. These experimental outcomes provide evidence that the proposed method outperformed the alternative approaches, accurately predicting student performance with a root-mean-square error (RMSE) value of 1.66, a Mean Absolute Percentage Error (MAPE) value of 9.75, and an R-squared value of 0.7430. These results show a significant improvement compared to the null model (RMSE = 4.05, MAPE = 24.89, and R-squared = 0.2897) and prove the efficiency of the techniques employed in the proposed method.

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来源期刊
Journal of Intelligence
Journal of Intelligence Social Sciences-Education
CiteScore
2.80
自引率
17.10%
发文量
0
审稿时长
11 weeks
期刊最新文献
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