使用机器学习预测学生在摩洛哥的失败:CRISP-DM方法的应用

Pub Date : 2021-10-22 DOI:10.46300/9109.2021.15.36
Nada Lebkiri, Mohamed Daoudi, Z. Abidli, Joumana Elturk, A. Soulaymani, Youssef Khatori, Youssef El Madhi, M. Benattou
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引用次数: 0

摘要

学生失败预测是大学学习环境中的主要研究课题之一,它有助于避免高等教育机构的失败,并为使教与学过程更加有效、高效和可靠提供依据。这项研究的总体目的是找出那些容易在某门大学课程中不及格的学生。本研究报告了一个基于CRISP-DM方法的教育数据挖掘项目的实施。数据是从伊本托法尔大学的APOGEE系统中收集的,这是测试课程的表格和规格。本文的商业目标是开发一个模型,可以识别在给定的学术课程中容易失败的学生。这种模式有助于防止高等教育机构的失败,并为使教学过程更加有效、高效和可靠提供基础。使用了教育数据挖掘领域中最常见的机器学习算法。我们的研究结果表明,所提出的方法在预测学生潜在失败方面能够达到97%的总体准确性。
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Using Machine Learning for Prediction Students Failure in Morocco: an Application of the CRISP-DM Methodology
Student failure prediction is one of the main topics in university learning contexts, as it helps to avoid failure in higher education institutions and provides a basis to make the teaching and learning process more effective, efficient and reliable. The overall aim of this study is to identify students who are susceptible to fail a given university course. This research paper reports the implementation of an Educational Data Mining project based on the CRISP-DM methodology. The data was collected from the APOGEE system of Ibn Tofail University, a form and specifications of the tested courses. The business goal of this paper is to develop a model that can identify students who are susceptible to failure in a given academic course. Such a model helps prevent failure in higher education institutions and provides a basis for making the teaching and learning process more effective, efficient and reliable. Most common machine learning algorithms in the field of Educational Data Mining were used. The results of our research showed that the proposed method was able to achieve an overall accuracy of 97% in predicting students at potential failure.
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