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Performance Prediction for Students: A Multi-Strategy Approach

机译:学生的成绩预测:一种多策略方法

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This paper presents a study on Predicting Student Performance (PSP) in academic systems. In order to solve the task, we have proposed and investigated different strategies. Specifically, we consider this task as a regression problem and a rating prediction problem in recommender systems. To improve the performance of the former, we proposed the use of additional features based on course-related skills. Moreover, to effectively utilize the outputs of these two strategies, we also proposed a combination of the two methods to enhance the prediction performance. We evaluated the proposed methods on a dataset which was built using the mark data of students in information technology at Vietnam National University, Hanoi (VNU). The experimental results have demonstrated that unlike the PSP in e-Learning systems, the regression-based approach should give better performance than the recommender system-based approach. The integration of the proposed features also helps to enhance the performance of the regression-based systems. Overall, the proposed hybrid method achieved the best RMSE score of 1.668. These promising results are expected to provide students early feedbacks about their (predicted) performance on their future courses, and therefore saving times of students and their tutors in determining which courses are appropriate for students’ ability.
机译:本文提出了一项关于在学术系统中预测学生表现(PSP)的研究。为了解决该任务,我们提出并研究了不同的策略。具体来说,我们认为此任务是推荐系统中的回归问题和评级预测问题。为了提高前者的性能,我们建议根据课程相关技能使用其他功能。此外,为了有效利用这两种策略的输出,我们还提出了两种方法的组合以提高预测性能。我们在使用河内越南国立大学(VNU)信息技术系学生的标记数据构建的数据集上评估了建议的方法。实验结果表明,与电子学习系统中的PSP不同,基于回归的方法应比基于推荐系统的方法具有更好的性能。建议功能的集成还有助于增强基于回归的系统的性能。总体而言,所提出的混合方法获得了1.668的最佳RMSE评分。预期这些有希望的结果将为学生提供关于他们在未来课程中(预期)表现的早期反馈,从而节省学生及其导师的时间,从而确定哪些课程适合学生的能力。

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