利用自组织地图作为工具研究和预测瓦拉克大学工科学生的成功

Q3 Multidisciplinary Walailak Journal of Science and Technology Pub Date : 2011-11-15 DOI:10.2004/WJST.V5I1.117
W. Kurdthongmee
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引用次数: 1

摘要

许多因素对本科生的成功有影响,特别是在工程专业。有些学生在第一年的学习后就因为GPA(平均成绩点)和/或GPAX(累积平均成绩点)很差而不得不退学。如果学生知道如何提高他们目前的GPA/GPAX才能顺利毕业,这将对他们有帮助。另外,如果他们目前必修科目的gpa不是很好,他们的学习预期结果是什么?本文利用自组织映射(SOM)神经网络作为工具,根据工程学生的学习成果将其聚类成不同的组。然后将结果用于生成权重图。图表反映了必修科目GPA/GPAX与学生教育状况的相关关系。SOM对其匹配阶段进行一些调整的结果也用于创建能够产生相当高程度正确性的预测器。这些有意义的结果旨在作为学生准备和提高自己的指导方针。此外,对于GPAX极低的学生,学生顾问和辅导员给予适当的建议可能是有用的。这可以通过建议学生少注册或撤回一些科目来实现,以利用他们的GPAX。此外,如果一些学生在所有必修科目中表现相当差,应该建议他们改变他们的学习领域。本文所采用的方法在该应用领域是一种新颖的方法。
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Utilization of a Self Organizing Map as a Tool to Study and Predict the Success of Engineering Students at Walailak University
Many factors have an influence on the success of undergraduate students particularly in engineering programs. Some students have to drop out as a result of obtaining very poor GPA (grade point average) and/or GPAX (accumulated grade point average) after only their first year of studying. It would be helpful for students if they know how their current GPA/GPAX could be improved in order to successfully graduate. In addition, what would be the expected outcome of their study, if their current GPAs of compulsory subjects are not fairly good? In this paper, the Self Organizing Map (SOM) neural network is utilized as a tool to cluster engineering student data into different groups by means of their study results. The results are then used to produce the weight maps. The maps reflect the correlation between GPA/GPAX of the compulsory subjects and the educational status of students. The result from the SOM with some adaptations to its matching phase is also used to create a predictor which is capable of producing a fairly high degree of correctness. The meaningful results are intended to be used as a guideline for students to prepare and improve themselves. In addition, it might be useful for student advisors and counselors to give appropriate advice to students whose GPAX are critically low. This can be accomplished by advising students to register less or withdraw some subjects in order to leverage their GPAX. In addition, some students should be advised to change their field of study if they perform fairly poorly in all compulsory subjects. The approach utilized in this paper is a novel one with respect to this application domain.
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来源期刊
Walailak Journal of Science and Technology
Walailak Journal of Science and Technology Multidisciplinary-Multidisciplinary
CiteScore
0.80
自引率
0.00%
发文量
0
审稿时长
24 weeks
期刊介绍: The Walailak Journal of Science and Technology (Walailak J. Sci. & Tech. or WJST), is a peer-reviewed journal covering all areas of science and technology, launched in 2004. It is published 12 Issues (Monthly) by the Institute of Research and Innovation of Walailak University. The scope of the journal includes the following areas of research : - Natural Sciences: Biochemistry, Chemical Engineering, Chemistry, Materials Science, Mathematics, Molecular Biology, Physics and Astronomy. -Life Sciences: Allied Health Sciences, Biomedical Sciences, Dentistry, Genetics, Immunology and Microbiology, Medicine, Neuroscience, Nursing, Pharmaceutics, Psychology, Public Health, Tropical Medicine, Veterinary. -Applied Sciences: Agricultural, Aquaculture, Biotechnology, Computer Science, Cybernetics, Earth and Planetary, Energy, Engineering, Environmental, Food Science, Information Technology, Meat Science, Nanotechnology, Plant Sciences, Systemics
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