A Hybrid Machine Learning Model for Grade Prediction in Online Engineering Education

Z. Kanetaki, C. Stergiou, G. Bekas, C. Troussas, C. Sgouropoulou
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引用次数: 11

Abstract

Facing the disruption caused by COVID-19 pandemic, the emergence of imposed and exclusive online learning revealed challenges for researchers worldwide, as of reforming curricula shortly and of collecting data accumulated by monitoring stu-dents’ commitment and academic performance. With this pool of data, this research explores grade prediction in a first-semester mechanical engineering CAD module, after testing the performance of the reform of specific curricula. A hybrid model has been created, based on 35 variables having been filtered out of statistical analysis and shown to be strongly correlated to students’ academic performance in the specif-ic online module during the first semester of the academic year 2020-2021. The hy-brid model consists of a Generalized Linear Model. It’s fitting errors are used as an extra predictor to an artificial neural network. The architecture of the neural network can be described by the following sizes: size of the input layer (36), size of the hidden layer (1) and size of the output layer (1). Since new factors are revealed to affect students’ academic achievements, the model has been trained in the 70% of the participants to predict the grade of the remaining 30%. The model has therefore been divided into three subsets, with a training set of 70% of the sample and one hidden layer predicting the test set (15%) and the validation set (15%). The final form of the trained hybrid model resulted in a coefficient of determination equal to 1 (R = 1). This means that the data fitting process resulted in a 100% success rate, in terms of associating the independent variables with the dependent variable (grade).
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基于混合机器学习的在线工程教育成绩预测模型
面对COVID-19大流行造成的破坏,强制性和排他的在线学习的出现给世界各地的研究人员带来了挑战,如短期内改革课程,收集通过监测学生的投入和学习成绩积累的数据。利用这一数据池,本研究在测试了具体课程改革的效果后,对机械工程CAD模块第一学期的成绩预测进行了探讨。根据统计分析中过滤出来的35个变量,创建了一个混合模型,该模型与学生在2020-2021学年第一学期特定在线模块的学习成绩密切相关。混合模型由广义线性模型组成。拟合误差被用作人工神经网络的额外预测因子。神经网络的架构可以用以下大小来描述:输入层的大小(36),隐藏层的大小(1)和输出层的大小(1)。由于有新的因素会影响学生的学习成绩,因此该模型已经在70%的参与者中进行了训练,以预测剩余30%的参与者的成绩。因此,该模型被分为三个子集,其中训练集占样本的70%,一个隐藏层预测测试集(15%)和验证集(15%)。训练混合模型的最终形式导致决定系数等于1 (R = 1)。这意味着数据拟合过程导致了100%的成功率,就将自变量与因变量(等级)相关联而言。
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