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An enhanced bayesian network model for prediction of students' academic performance in engineering programs

机译:改进的贝叶斯网络模型可预测工程课程中学生的学习成绩

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Predicting students' academic performance (SAP) provides invaluable information for educational institutes' authorities. This information offers numerous opportunities for instructors and decision makers to improve their quality of services and consequently help the students to succeed in their education. In this paper, we introduce a prediction model to forecast the SAP of the Engineering students. The model is based on the Bayesian networks framework. The model is constructed using a database of the undergraduate engineering students at University of Illinois at Chicago (UIC). The specific objective of this model is to predict the students' grades in three major courses which most of the students take in their second semester. The grades in these courses have major impact on students' retention rates as many students receive low grades in them. Therefore, predicting students' grades in these courses can be used to identify the students who might receive low grades and hence need extra help from the educational authorities. The proposed model has been tested against the conventional models which have been proposed in the literature and it is proven to outperform them in grade prediction.
机译:预测学生的学习成绩(SAP)为教育机构的主管部门提供了宝贵的信息。这些信息为教师和决策者提供了许多提高服务质量的机会,从而帮助学生成功地接受教育。在本文中,我们介绍了一种预测模型,以预测工科学生的SAP。该模型基于贝叶斯网络框架。该模型是使用位于芝加哥的伊利诺伊大学(UIC)的本科工程专业学生的数据库构建的。该模型的特定目标是预测大多数学生在第二学期修读的三门主要课程中的学生成绩。这些课程的成绩对学生的保留率有重大影响,因为许多学生的成绩很低。因此,可以通过预测这些课程的学生成绩来识别可能会获得较低成绩的学生,从而需要教育当局的额外帮助。已针对文献中提出的常规模型对提出的模型进行了测试,事实证明,该模型在等级预测中表现优于传统模型。

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