Dropout Prediction Model for College Students in MOOCs Based on Weighted Multi-feature and SVM

Zhang Yujiao, Ling Weay Ang, Shi Shaomin, Sellappan Palaniappan
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Abstract

Due to the COVID -19 pandemic, MOOCs have become a popular form of learning for college students. However, unlike traditional face-to-face courses, MOOCs offer little faculty supervision, which may result in students being insufficiently motivated to continue learning, ultimately leading to a high dropout rate. Consequently, the problem of high dropout rates in MOOCs requires urgent attention in MOOC research. Predicting dropout rates is the first step to address this problem, and MOOCs have a large amount of behavioral data that can be used for such predictions. Most existing models for predicting MOOC dropout based on behavioral data assign equal weights to each behavioral characteristic, despite the fact that each behavioral characteristic has a different effect on predicting dropout. To address this problem, this paper proposes a dropout prediction model based on the fusion of behavioral data and Support Vector Machine (SVM). This innovative model assigns different weights to different behavior features based on Pearson principle and integrates them as data inputs to the model. Dropout prediction is essentially a binary problem, Support Vector Machine Classifier is then trained using the training dataset 1 and dataset 2. Experimental results on both datasets show that this predictive model outperforms previous models that assign the same weights to the behavior features.
基于加权多特征和支持向量机的mooc大学生辍学预测模型
受新冠肺炎疫情影响,慕课成为大学生的热门学习方式。然而,与传统的面对面课程不同,mooc提供的教师监督很少,这可能导致学生没有足够的动力继续学习,最终导致高辍学率。因此,MOOC的高辍学率问题是MOOC研究中亟待关注的问题。预测辍学率是解决这一问题的第一步,mooc拥有大量的行为数据,可用于此类预测。大多数现有的基于行为数据的MOOC辍学预测模型对每个行为特征赋予了相同的权重,尽管每个行为特征对预测辍学的影响是不同的。针对这一问题,本文提出了一种基于行为数据和支持向量机(SVM)融合的辍学预测模型。该创新模型基于Pearson原理对不同的行为特征赋予不同的权重,并将其作为数据输入集成到模型中。辍学预测本质上是一个二元问题,然后使用训练数据集1和数据集2训练支持向量机分类器。在两个数据集上的实验结果表明,该预测模型优于先前对行为特征分配相同权重的模型。
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