利用集成机器学习设计新的学生成绩预测模型

Rajan Saluja, Munishwar Rai, R. Saluja
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引用次数: 2

摘要

任何教育机构的学生学业成功都是所有利益相关者的首要要求,即学生、教师、家长、行政人员和管理人员、行业和环境。所有利益相关者的定期反馈有助于高等教育机构在专业和学术上的发展,但它们必须使用能够帮助机构更快发展的新兴技术。使用机器学习等流行的人工智能技术对学生的成功进行早期预测,早期发现有风险的学生,并预测合适的分支或课程,可以帮助管理层和学生提高学术水平。在我们的工作中,我们提出了一种新的学生成绩预测模型,在该模型中,我们使用了集成机器学习,堆叠了四个多类分类器、决策树、k近邻、朴素贝叶斯和一对一支持向量机分类器。所提出的模型尽早预测学生的最终成绩,并为新学生预测合适的流。一个由来自工程学院五个不同分支的一千多名学生组成的学生数据集已经被用来测试结果。所提出的模型比较了正在使用的四种机器学习(ML)技术,并以93%的准确率预测了最终成绩。
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Designing new student performance prediction model using ensemble machine learning
Academic success for students in any educational institute is the primary requirement for all stakeholders, i.e., students, teachers, parents, administrators and management, industry, and the environment. Regular feedback from all stakeholders helps higher education institutions (HEIs) rise professionally and academically, yet they must use emerging technologies that can help institutions to grow at a faster pace. Early prediction of students’ success using trending artificial intelligence technologies like machine learning, early finding of at-risk students, and predicting a suitable branch or course can help both management and students improve their academics. In our work, we have proposed a new student performance prediction model in which we have used ensemble machine learning with stacking of four multi-class classifiers, decision tree, k-nearest neighbor, Naïve Bayes, and One vs. Rest support vector machine classifiers. The proposed model predicts the final grade of a student at the earliest possible time and the suitable stream for a new student. A student dataset of over a thousand students from five different branches of an engineering institute has been taken to test the results. The proposed model compares the four-machine learning (ML) techniques being used and predicts the final grade with an accuracy of 93%.
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25
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