High-quality education is one of the keys to achieving a more sustainable world. The recent COVID-19 epidemic has triggered the outbreak of online education, which has enabled both students and teachers to learn and teach at home. Meanwhile, it is now possible to record and research a large amount of learning data using online learning platforms in order to offer better intelligent educational services. Knowledge Tracing (KT), which aims to monitor students' evolving knowledge state, is a fundamental and crucial task to support these intelligent services. Therefore, an increasing amount of research attention has been paid to this emerging area and considerable progress has been made. In this survey, we propose a new taxonomy of existing basic KT models from a technical perspective and provide a comprehensive overview of these models in a systematic manner. In addition, many variants of KT models have been proposed to capture more complete learning process. We then review these variants involved in three phases of the learning process: before, during, and after the student learning, respectively. Moreover, we present several typical applications of KT in different educational scenarios. Finally, we provide some potential directions for future research in this fast-growing field.
翻译:高素质教育是实现更可持续的世界的关键之一。最近的COVID-19流行病引发了在线教育的爆发,使学生和教师都能够在家里学习和教学。与此同时,现在有可能用在线学习平台记录和研究大量学习数据,以便提供更好的智能教育服务。旨在监测学生不断演变的知识状态的知识追踪(KT)是支持这些智能服务的基本和关键的任务。因此,对这个新兴领域的研究关注越来越多,并取得了相当大的进展。在这次调查中,我们从技术角度提出了现有KT基本模型的新分类,并系统地对这些模型提供了全面的概览。此外,还提出了许多KT模型的变式,以捕捉更完整的学习过程。我们随后分别审查了学习过程的三个阶段:学生学习之前、期间和之后的这些变式。此外,我们提出了KT在不同教育情景中的几种典型应用。最后,我们为这个快速发展的领域的未来研究提供了一些潜在方向。