Knowledge tracing (KT) is the problem of modeling each student's mastery of knowledge concepts (KCs) as (s)he engages with a sequence of learning activities. It is an active research area to help provide learners with personalized feedback and materials. Various deep learning techniques have been proposed for solving KT. Recent release of large-scale student performance dataset \cite{choi2019ednet} motivates the analysis of performance of deep learning approaches that have been proposed to solve KT. Our analysis can help understand which method to adopt when large dataset related to student performance is available. We also show that incorporating contextual information such as relation between exercises and student forget behavior further improves the performance of deep learning models.
翻译:知识追踪(KT)是将每个学生掌握知识概念(KCs)作为学习活动顺序的模型的问题,这是一个积极的研究领域,有助于向学习者提供个性化反馈和材料,为解决KT提出了各种深层次的学习技术。最近发布的大型学生表现数据集\cite{choi2019ednet}激励了对为解决KT而提出的深层次学习方法的绩效的分析。我们的分析有助于了解在学生表现有大数据集时采用哪种方法。我们还表明,纳入实践与学生遗忘行为之间的关系等背景信息,可以进一步改善深层学习模式的绩效。