基于k近邻算法的MUET结果预测

Norlina Mohd Sabri, Siti Fatimah Azzahra Hamrizan
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引用次数: 0

摘要

基于机器学习的预测已被应用于各个领域,以解决不同类型的问题。在教育领域,对考试成绩预测的研究越来越受到研究者的关注。将机器学习应用于学生成绩预测,使教育机构能够识别高不及格率、学习问题和学生成绩低的原因。本研究提出基于k近邻算法(KNN)的马来西亚大学英语测试(MUET)结果预测。KNN是一种功能强大的预测算法,已应用于各种预测问题。对MUET成绩的预测可以帮助学生和老师在实际考试前做更充分的准备,从而提高所需的英语语言技能。MUET成绩预测是基于学生的英语课程成绩,有516个学生成绩数据是从Universiti technologii MARA (UiTM) Dungun校区收集的。所使用的性能度量是平均精度、百分比误差和均方误差(MSE)。在本研究中,KNN预测模型产生了一个可接受的性能,准确率为65.29%。在未来的工作中,可以对KNN进行修饰或杂交,以进一步提高其性能。此外,还可以探索其他算法来解决这个问题,以进一步验证MUET结果预测的最佳预测模型。
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Prediction of MUET Results Based on K-Nearest Neighbour Algorithm
The machine learning based prediction has been applied in various fields to solve different kind of problems. In education, the research on the predictions of examination results is gaining more attentions among the researchers. The adaptation of machine learning for the prediction of students’ achievement enables the educational institutions to identify the high failure rate, learning problems, and reasons for low student performance. This research is proposing the prediction of the Malaysian University English Test (MUET) results based on the K-Nearest Neighbour Algorithm (KNN). KNN is a powerful algorithm that has been applied in various prediction problems. The prediction of the MUET results would help the students and lecturers to be more well prepared and could improve the required English language skills accordingly before the actual examination. The MUET result prediction is based on the student’s English courses grades and there are 516 data of students’ results that have been collected from Universiti Teknologi MARA (UiTM) Dungun campus. The performance measurement that has been used are the mean accuracy, percentage error and mean squared error (MSE). In this research, the KNN prediction model has generated an acceptable performance with 65.29% accuracy. For future work, KNN could be modified or hybridized to further improve its performance. Furthermore, other algorithms could also be explored into this problem to further validate the best predictive model for the prediction of the MUET results.
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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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