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首页> 外文期刊>Mathematical Problems in Engineering: Theory, Methods and Applications >MOOC Dropout Prediction Using a Hybrid Algorithm Based on Decision Tree and Extreme Learning Machine
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MOOC Dropout Prediction Using a Hybrid Algorithm Based on Decision Tree and Extreme Learning Machine

机译:基于决策树和极端学习机的混合算法,MOOC丢失预测

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摘要

Massive Open Online Courses (MOOCs) have boomed in recent years because learners can arrange learning at their own pace. High dropout rate is a universal but unsolved problem in MOOCs. Dropout prediction has received much attention recently. A previous study reported the problem of learning behavior discrepancy leading to a wide range of fluctuation of prediction results. Besides, previous methods require iterative training which is time intensive. To address these problems, we propose DT-ELM, a novel hybrid algorithm combining decision tree and extreme learning machine (ELM), which requires no iterative training. The decision tree selects features with good classification ability. Further, it determines enhanced weights of the selected features to strengthen their classification ability. To achieve accurate prediction results, we optimize ELM structure by mapping the decision tree to ELM based on the entropy theory. Experimental results on the benchmark KDD 2015 dataset demonstrate the effectiveness of DT-ELM, which is 12.78%, 22.19%, and 6.87% higher than baseline algorithms in terms of accuracy, AUC, and F1-score, respectively.
机译:近年来,大规模开放的在线课程(Moocs)已蓬勃发展,因为学习者可以以自己的步伐安排学习。高辍学率是MOOCS中的普遍但未解决的问题。辍学预测最近受到了很多关注。先前的研究报告了学习行为差异的问题导致广泛的预测结果波动。此外,以前的方法需要迭代培训,这是时间密集的。为了解决这些问题,我们提出了一种新的混合算法,结合决策树和极端学习机(ELM),这不需要迭代培训。决策树选择具有良好分类能力的功能。此外,它确定所选功能的增强权重,以加强其分类能力。为了实现准确的预测结果,我们基于熵理论将决策树映射到ELM来优化ELM结构。基准KDD 2015 Dataset的实验结果证明了DT-ELM的有效性,即在准确性,AUC和F1分数中分别比基线算法高出12.78%,22.19%和6.87%。

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