Data Analysis of Student Academic Performance and Prediction of Student Academic Performance Based on Machine Learning Algorithms

Yucong Li
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Abstract

With the development and popularization of education, the quality of education has become one of the key factors in the development of a country. And students' academic performance, as one of the important indicators of education quality, has been attracting much attention. This paper mines and analyzes the data affecting students' academic performance, and also conducts a predictive study of students' academic performance using logistic regression model. In this study, 30 indicators such as gender, age, family size, parental education, parental occupation, family relationship, health, and the number of drinks per this paperek and per month this paperre used as input variables, and students' academic performance was categorized into SUCCESS and FAIL, and the training and test sets this paperre divided according to the ratio of 7:3, and the logistic regression model was used for training and prediction. The results show that the logistic regression model has high prediction accuracy in predicting students' academic performance (whether they fail or not), with an accuracy of 95.8%, precision of 96.7%, recall of 95.1%, and F1 of 95.8%. This indicates that the logistic regression model has high accuracy and reliability in predicting students' academic performance. The results of this study are important for schools and educational organizations. Through the prediction of students' academic performance, schools can identify students' learning problems in time and take targeted measures to help students improve their academic performance. Meanwhile, this study also provides some useful reference information for individual students to help them better understand their learning situation, adjust their learning strategies in time and improve their learning efficiency. In the future, the method can be further explored and improved to enhance the accuracy and reliability of the prediction and to provide better support and assistance for students' learning and development.
学生学业成绩数据分析和基于机器学习算法的学生学业成绩预测
随着教育的发展和普及,教育质量已成为一个国家发展的关键因素之一。而学生的学业成绩作为衡量教育质量的重要指标之一,一直备受关注。本文对影响学生学业成绩的数据进行了挖掘和分析,并利用逻辑回归模型对学生学业成绩进行了预测研究。本研究将性别、年龄、家庭人口、父母学历、父母职业、家庭关系、健康状况、每本文由毕业论文网收集整理月喝酒次数等30个指标作为输入变量,将学生的学业成绩分为SUCCESS和FAIL两类,并按照7:3的比例划分训练集和测试集本文由毕业论文网收集整理,采用Logistic回归模型进行训练和预测。结果表明,逻辑回归模型在预测学生学业成绩(是否不及格)方面具有较高的预测准确度,准确率为 95.8%,精确率为 96.7%,召回率为 95.1%,F1 为 95.8%。这表明逻辑回归模型在预测学生学业成绩方面具有较高的准确性和可靠性。本研究的结果对学校和教育机构具有重要意义。通过对学生学业成绩的预测,学校可以及时发现学生的学习问题,并采取有针对性的措施帮助学生提高学业成绩。同时,本研究也为学生个人提供了一些有用的参考信息,帮助他们更好地了解自己的学习情况,及时调整学习策略,提高学习效率。今后,可以进一步探索和改进该方法,提高预测的准确性和可靠性,为学生的学习和发展提供更好的支持和帮助。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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