Student procrastination and cramming for deadlines are major challenges in online learning environments, with negative educational and well-being side effects. Modeling student activities in continuous time and predicting their next study time are important problems that can help in creating personalized timely interventions to mitigate these challenges. However, previous attempts on dynamic modeling of student procrastination suffer from major issues: they are unable to predict the next activity times, cannot deal with missing activity history, are not personalized, and disregard important course properties, such as assignment deadlines, that are essential in explaining the cramming behavior. To resolve these problems, we introduce a new personalized stimuli-sensitive Hawkes process model (SSHP), by jointly modeling all student-assignment pairs and utilizing their similarities, to predict students' next activity times even when there are no historical observations. Unlike regular point processes that assume a constant external triggering effect from the environment, we model three dynamic types of external stimuli, according to assignment availabilities, assignment deadlines, and each student's time management habits. Our experiments on two synthetic datasets and two real-world datasets show a superior performance of future activity prediction, comparing with state-of-the-art models. Moreover, we show that our model achieves a flexible and accurate parameterization of activity intensities in students.
翻译:在网上学习环境中,学生的拖延和对最后期限的纠缠是造成负面教育和福祉副作用的重大挑战。在连续的时间里模拟学生活动并预测他们的下一个学习时间是有助于创造个性化的及时干预来减轻这些挑战的重要问题。然而,以往尝试学生迟缓的动态模型存在重大问题:他们无法预测下一个活动时间,无法处理缺失的活动历史,无法处理缺失的活动历史,没有个性化,无视重要的课程属性,如分配期限等重要课程属性,这些属性对于解释火花行为至关重要。为了解决这些问题,我们引入了一种新的个性化的刺激型鹰式流程模型(SSHP),通过联合模拟所有学生派配对并利用其相似之处来预测学生的下一个活动时间,即使没有历史观察,也存在这样的问题。与经常点进程不同,我们根据分配的可用性、分配期限和每个学生的时间管理习惯来模拟三种动态的外部刺激类型。我们在两个合成数据模型和两个实体-世界的精确模型中进行实验,在比较我们未来的活动中,一个高水平的成绩展示了我们未来的预测。