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    姚丽, 崔超然, 马乐乐, 王飞超, 马玉玲, 陈勐, 尹义龙. 基于校园上网行为感知的学生成绩预测方法[J]. 计算机研究与发展, 2022, 59(8): 1770-1781. DOI: 10.7544/issn1000-1239.20220060
    引用本文: 姚丽, 崔超然, 马乐乐, 王飞超, 马玉玲, 陈勐, 尹义龙. 基于校园上网行为感知的学生成绩预测方法[J]. 计算机研究与发展, 2022, 59(8): 1770-1781. DOI: 10.7544/issn1000-1239.20220060
    Yao Li, Cui Chaoran, Ma Lele, Wang Feichao, Ma Yuling, Chen Meng, Yin Yilong. Student Performance Prediction Base on Campus Online Behavior-Aware[J]. Journal of Computer Research and Development, 2022, 59(8): 1770-1781. DOI: 10.7544/issn1000-1239.20220060
    Citation: Yao Li, Cui Chaoran, Ma Lele, Wang Feichao, Ma Yuling, Chen Meng, Yin Yilong. Student Performance Prediction Base on Campus Online Behavior-Aware[J]. Journal of Computer Research and Development, 2022, 59(8): 1770-1781. DOI: 10.7544/issn1000-1239.20220060

    基于校园上网行为感知的学生成绩预测方法

    Student Performance Prediction Base on Campus Online Behavior-Aware

    • 摘要: 学生成绩预测旨在利用学生的相关信息预测其在未来的学业表现.随着校园信息化建设的持续推进,校园网络认证系统越来越完善,各高校逐步积累了丰富的学生校园上网行为数据.考虑到人的行为表现和学习能力密切相关,以校园上网行为感知为切入点,通过挖掘学生的上网行为日志来预测他们的成绩.为此,收集构建了一个同时包含学生校园上网行为和成绩数据的真实数据集,并通过数据分析证明两者之间确实存在一定的关联性.在此基础上,提出了一个端到端的双层自注意力网络(dual-level self-attention network, DEAN),引入级联式的自注意力机制来分别提取学生每一天的局部上网行为特征和长时间的全局上网行为特征,更好地解决了长行为序列建模问题.此外,通过多任务学习策略在统一的框架下同时解决面向不同专业的学生成绩预测问题,并设计了基于学生排名差的代价敏感损失来进一步提升方法的性能.实验结果表明:相比于传统的序列建模方法,所提出的方法具有更好的预测精度.

       

      Abstract: Student performance prediction aims to predict students’ future academic performance based on student-related information. With the growing advancement of campus IT applications, the network authentication system on campus is getting more perfect, and universities have accumulated rich data on students’ online behavior. Due to the fact that human behavior and learning ability are highly correlated, from the perspective of campus online behavior awareness, seeks to predict students’ performance by mining their online logs. To this end, we collect a real dataset consisting of both students’ online behavior and performance data, and proves the correlation between them via data analysis. On this basis, we propose an end-to-end dual-level self-attention network (DEAN), which introduces a hierarchical self-attention mechanism to separately capture the local and global characteristics of students’ daily and long-term online behavior, solving the problem of long behavior sequence modeling better. Besides, the multi-task learning is used to simultaneously conduct student performance prediction for different majors under a unified framework, and the cost-sensitive learning is designed according to the difference between students’ rankings to further improve the method performance. Experimental results demonstrate that the proposed method can make more accurate predictions in comparison with the traditional sequence modeling methods.

       

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