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Prediction of academic achievements of vocational and technical high school (VTS) students in science courses through artificial neural networks (comparison of Turkey and Malaysia)

机译:通过人工神经网络预测职业技术高中(VTS)学生学生的学术成果(土耳其与马来西亚的比较)

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This study aims to predict the academic achievements of Turkish and Malaysian vocational and technical high school (VTS) students in science courses (physics, chemistry and biology) through artificial neural networks (ANN) and to put forth the measures to be taken against their failure. The study population consisted of 10th and 11th grade 922 VTS students in Turkey and 1050 VTS students in Malaysia. The study was conducted with the screening model, and a 34-item demographic questionnaire was developed for the collection of data Using the SPSS 24.0, the KR20 reliability coefficient of the questionnaire was found to be .90. The items in the questionnaire that were believed to affect academic achievement were accepted as independent variable/input, and the academic achievement averages of students in the previous year's physics, chemistry and biology courses were considered as dependent variables/output. Using these parameters, a model was created and the academic achievements of the students were predicted with ANN using the Matlab R2016a program. At the end of the study, a successful academic achievement prediction system was developed with an average 98.0% sensitivity over 922 samples for Turkey and with a 95.7% sensitivity over 1050 samples for Malaysia, and the measures to be taken were determined in order the prevent failure of students.
机译:本研究旨在通过人工神经网络(ANN)预测土耳其和马来西亚职业技术高中(VTS)学生的学术成就,并提出措施,以防止失败。该研究人口由土耳其10岁和11年级922名VTS学生组成,在马来西亚1050名VTS学生。该研究是用筛选模型进行的,使用SPSS 24.0为数据集合进行34项人口调查问卷,发现问卷的KR20可靠性系数是.90。被认为影响学术成就的调查问卷中的项目被接受为独立的变量/投入,以及前一年物理,化学和生物学课程的学生的学术成就平均被认为是依赖变量/产出。使用这些参数,创建了一个模型,使用Matlab R2016A程序预测学生的学术成就。在该研究结束时,开发了一个成功的学术成就预测系统,平均98.0%以上的火鸡922个样品敏感性,同比1050多个样品的敏感性为95.7%,并确定待采取的措施学生失败。

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