Research on the identification method of poor students based on SVM and decision tree algorithm

Shuqing Hao, Yinming Zhang, Yun Qing
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Abstract

In recent years, the expansion of colleges and universities has led to a sharp rise in the number of students, and the number of poor students has also increased, which has greatly increased the difficulty and workload of financial aid for poor students. In order to improve the accuracy and efficiency of poor student identification, there is an urgent need to adopt digital and intelligent measures to assist poor student identification. In this paper, we propose a method to identify needy students using SVM and decision tree algorithm. Firstly, students' campus card consumption information is preprocessed to obtain the consumption poverty index of each student by SVM classification model. Then the decision tree algorithm is used to derive the student's family poverty index based on the student's family information. Finally, the comprehensive poverty index is calculated by weighted summation. The experimental results show that the proposed method realizes the statistics and analysis of students' consumption and family information, and it can identify poor students more accurately, which effectively improves the efficiency and accuracy of poor students' identification.
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基于SVM和决策树算法的贫困生识别方法研究
近年来,高校扩招导致学生数量急剧上升,贫困生数量也随之增加,大大增加了贫困生资助的难度和工作量。为了提高贫困生识别的准确性和效率,迫切需要采取数字化和智能化的措施来辅助贫困生识别。本文提出了一种基于支持向量机和决策树算法的贫困学生识别方法。首先,对学生的校园一卡通消费信息进行预处理,通过SVM分类模型得到每个学生的消费贫困指数。然后根据学生的家庭信息,采用决策树算法推导出学生的家庭贫困指数。最后,采用加权求和法计算综合贫困指数。实验结果表明,本文提出的方法实现了对学生消费和家庭信息的统计分析,能够更准确地识别贫困生,有效提高了贫困生识别的效率和准确性。
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