A Study of Prediction Accuracy of English Test Performance Using Data Mining and Analysis

Yujie Duan
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Abstract

This paper focused on the effect of data mining in predicting students' English test scores. With the progress of data mining analysis, there are more applications in teaching, and data mining to achieve the prediction of students’ test scores is important to support the educational work. In this paper, the C4.5 decision tree algorithm was improved by combining Taylor's series, and then the data of students' English tests in 2019-2020 were collected for experiments. The results showed that the scores of “Comprehensive English” and “Specialized English” had a great influence on the score of CET-4, and the improved C4.5 algorithm was more efficient than the original one, maintained a fast computation speed even when the data volume was large, and had an accuracy of more than 85%. The results demonstrate the accuracy of the improved C4.5 algorithm for predicting students’ English test scores. The improved C4.5 algorithm can be extended and used in reality.
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基于数据挖掘与分析的英语考试成绩预测准确性研究
本文主要研究数据挖掘在预测学生英语考试成绩方面的作用。随着数据挖掘分析的进步,在教学中有了更多的应用,而数据挖掘实现对学生考试成绩的预测对支持教育工作具有重要意义。本文结合泰勒级数对C4.5决策树算法进行了改进,并收集了2019-2020年学生英语测试的数据进行了实验。结果表明,“综合英语”和“专业英语”的成绩对大学英语四级成绩有很大影响,改进后的C4.5算法比原来的算法效率更高,即使在数据量很大的情况下也能保持较快的计算速度,准确率超过85%。结果证明了改进的C4.5算法预测学生英语考试成绩的准确性。改进后的C4.5算法可以在实际中推广使用。
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来源期刊
Annals of Emerging Technologies in Computing
Annals of Emerging Technologies in Computing Computer Science-Computer Science (all)
CiteScore
3.50
自引率
0.00%
发文量
26
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