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Application of machine learning and data mining in predicting the performance of intermediate and secondary education level student

机译:机器学习与数据挖掘在中级和中等教育等级学生表现中的应用

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摘要

The presented work is a student marks and grade prediction system using supervised machine learning techniques, the system is developed on the historic performance of students. The data used in this research is collected from Federal Board of Intermediate and Secondary Education Islamabad Pakistan, there are 7 regions in FB1SE i.e. Punjab, Sindh, Khyber Pakhtunkhwa, Balo-chistan, Azad Jammu and Kashmir and overseas. The aims of this work is to analyze the education quality which is closely tightened with the sustainable development goals. The implementation of the system has produced an excess of data which must be processed suitably to gain more valuable information that can be more useful for future development and planning. Student marks and grade prediction from their historic academic data is a popular and useful application in educational data mining, so it is becoming a valuable source of information which can be used in different manners to improve the education quality in the country. Related work shows that several method for academic grade prediction are developed for the betterment of teaching and administrative staff of an educational organizational system. In our proposed methodology, the obtained data is preprocessed to improve the quality of data, the labeled student historic data (29 optimal attributes) is used to train decision tree classifier and regression model. The classification system will predict the grade while the regression model will predict the marks, finally the results obtained from both the model are analyzed. The obtain results show the effectiveness and importance of machine learning technology in predicating the students performance.
机译:所呈现的工作是使用监督机器学习技术的学生标记和等级预测系统,该系统是在学生的历史表现上开发的。本研究中使用的数据从中级和中等教育伊斯兰教巴基斯坦联邦委员会收集,FB1SE有7个地区,即旁遮普,斯廷德,Khyber Pakhtunkhwa,Balo-Chistan,Azad Jammu和Kashmir和海外。这项工作的目的是分析与可持续发展目标紧密收紧的教育质量。系统的实施产生了多余的数据,必须适当地处理,以获得更有价值的信息,对未来的发展和规划更有用。历史学术数据的学生标记和等级预测是教育数据挖掘中的流行和有用的应用,因此它成为一个有价值的信息来源,可以以不同的方式使用,以改善该国的教育质量。相关工作表明,为改善教育组织系统的教学和行政人员提供了几种学术级预测方法。在我们提出的方法中,所获得的数据被预处理以提高数据质量,标记的学生历史数据(29最佳属性)用于培训决策树分类器和回归模型。分类系统将预测成绩,同时回归模型预测标记,最后分析了从两个模型获得的结果。获得结果表明了机器学习技术在谓词追溯性能方面的有效性和重要性。

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