论文标题

EPARS:具有在线和离线学习行为的高风险学生的早期预测

EPARS: Early Prediction of At-risk Students with Online and Offline Learning Behaviors

论文作者

Yang, Yu, Wen, Zhiyuan, Cao, Jiannong, Shen, Jiaxing, Yin, Hongzhi, Zhou, Xiaofang

论文摘要

对处于危险的学生的早期预测(Star)是提供及时干预辍学和自杀的有效和重要手段。现有作品主要依赖于在线或离线学习行为,这些学习行为不足以捕获整个学习过程并导致不满意的预测表现。我们提出了一种新颖的算法(EPARS),可以通过在线和离线学习行为进行建模来预测一个学期的早期星星。在线行为来自学生使用在线学习管理系统时的活动日志。离线行为源自库的签入记录。我们的主要观察结果是两个倍。与好学生有很大不同,Star几乎没有定期,清晰的学习程序。我们设计了一种多尺度的规范方法,以提取对稀疏数据可靠的学习行为的规律性。其次,星星的朋友更有可能面临风险。我们构建了一个同时存在的网络,以近似基础的社交网络,并通过网络嵌入将社会同质化作为特征。为了验证拟议的算法,在一所亚洲大学中进行了广泛的实验,其中有15,503名本科生。结果表明,在预测星中,EPAR的表现优于14.62%〜38.22%。

Early prediction of students at risk (STAR) is an effective and significant means to provide timely intervention for dropout and suicide. Existing works mostly rely on either online or offline learning behaviors which are not comprehensive enough to capture the whole learning processes and lead to unsatisfying prediction performance. We propose a novel algorithm (EPARS) that could early predict STAR in a semester by modeling online and offline learning behaviors. The online behaviors come from the log of activities when students use the online learning management system. The offline behaviors derive from the check-in records of the library. Our main observations are two folds. Significantly different from good students, STAR barely have regular and clear study routines. We devised a multi-scale bag-of-regularity method to extract the regularity of learning behaviors that is robust to sparse data. Second, friends of STAR are more likely to be at risk. We constructed a co-occurrence network to approximate the underlying social network and encode the social homophily as features through network embedding. To validate the proposed algorithm, extensive experiments have been conducted among an Asian university with 15,503 undergraduate students. The results indicate EPARS outperforms baselines by 14.62% ~ 38.22% in predicting STAR.

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