论文标题
使用鼠标互动功能预测交互式在线问题库中的学生表现
Predicting Student Performance in Interactive Online Question Pools Using Mouse Interaction Features
论文作者
论文摘要
建模学生学习并进一步预测表现是在线学习中一项完善的任务,对于个性化的教育至关重要,通过根据他们的需求向不同的学生推荐不同的学习资源。交互式在线问题池(例如,教育游戏平台)是在线教育的重要组成部分,近年来变得越来越受欢迎。但是,大多数现有关于学生绩效预测目标的工作在线学习平台上具有结构良好的课程,预定义的问题顺序和域专家提供的准确知识标签。目前尚不清楚如何在没有专家的问题良好的问题订单或知识标签的情况下进行交互式在线问题库中的学生绩效预测。在本文中,我们提出了一种新颖的方法,通过进一步考虑学生的互动功能和问题之间的相似性来提高互动在线问题库中的学生绩效预测。具体来说,我们介绍了基于学生鼠标运动轨迹的新功能(例如,考虑时间,第一次尝试和首次拖放),以描绘学生解决问题的细节。此外,异构信息网络用于整合学生在类似问题上解决历史问题的信息,从而在新问题上提高了学生的绩效预测。我们使用四个典型的机器学习模型从现实世界的交互式问题池中评估了数据集上提出的方法。
Modeling student learning and further predicting the performance is a well-established task in online learning and is crucial to personalized education by recommending different learning resources to different students based on their needs. Interactive online question pools (e.g., educational game platforms), an important component of online education, have become increasingly popular in recent years. However, most existing work on student performance prediction targets at online learning platforms with a well-structured curriculum, predefined question order and accurate knowledge tags provided by domain experts. It remains unclear how to conduct student performance prediction in interactive online question pools without such well-organized question orders or knowledge tags by experts. In this paper, we propose a novel approach to boost student performance prediction in interactive online question pools by further considering student interaction features and the similarity between questions. Specifically, we introduce new features (e.g., think time, first attempt, and first drag-and-drop) based on student mouse movement trajectories to delineate students' problem-solving details. In addition, heterogeneous information network is applied to integrating students' historical problem-solving information on similar questions, enhancing student performance predictions on a new question. We evaluate the proposed approach on the dataset from a real-world interactive question pool using four typical machine learning models.