连贯垂直课程中学生未来表现的递进预测

Satrio Adi Priyambada, Fatharani Wafda, Tsuyoshi Usagawa, ER Mahendrawathi
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引用次数: 1

摘要

预测学生未来的表现对学术利益相关者来说很重要,因为学生的成功是高等教育机构的目标。基于过去表现的预测以及与课程的一致性对于支持具有连贯垂直课程的大学的有效决策行动至关重要。预测的结果可以用来进行干预,保证学生按时毕业,也可以防止学生辍学。在本文中,我们提出了一种包括特征工程在内的逐步预测学生未来评估的方法。使用集成学习技术,我们调整了现有的基于集成的渐进式预测,使其可以应用于使用连贯垂直课程的学生数据。本文采用行为数据代替基于领域知识的数据。结果表明,该算法在真实学生数据集上的准确率得到了提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Progressive Prediction of Students’ Future Performance on Coherent Vertical Curriculum
Predicting students’ future performance is important for academic stakeholders as the students’ success is the objective of the higher educational institutes. The prediction based on past performance and alignment with the curriculum is crucial to support decision-making action effectively for the university with a coherent vertical curriculum. The result of the prediction can be used to intervene and ensure that the student can graduate on time, also preventing the student from dropping out. In this paper, we proposed a methodology for predicting progressively the students’ future assessment including feature engineering. Using the ensemble learning techniques, we adapt the existing Ensemble-based Progressive Prediction so it can be applied on students’ data that used the Coherent Vertical Curriculum. In this paper, the behavioral data is used instead of domain knowledge-based data. The results show that the algorithm’s accuracy has been improved on a real-world student dataset.
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