论文标题
知识追踪:调查
Knowledge Tracing: A Survey
论文作者
论文摘要
人类能够通过教学转移知识的能力是人类智力的基本方面之一。人类老师可以跟踪学生的知识,以自定义学生需求的教学。随着在线教育平台的兴起,机器类似地需要跟踪学生的知识并量身定制学习经验。这被称为文献中的知识追踪(KT)问题。有效解决KT问题将释放计算机辅助教育应用的潜力,例如智能辅导系统,课程学习和学习材料的建议。此外,从更一般的角度来看,学生可以代表包括人类和人造代理在内的任何形式的智能代理。因此,KT的潜力可以扩展到任何机器教学应用程序方案,这些方案寻求为学生代理(即机器学习模型)定制学习经验。在本文中,我们为KT文献提供了全面,系统的综述。我们涵盖了从早期尝试到使用深度学习的最新最新方法的广泛方法,同时突出了模型的理论方面和基准数据集的特征。除此之外,我们还阐明了密切相关方法之间的关键建模差异,并以易于理解的格式进行了总结。最后,我们讨论了KT文献中的当前研究差距以及可能的未来研究和应用方向。
Humans ability to transfer knowledge through teaching is one of the essential aspects for human intelligence. A human teacher can track the knowledge of students to customize the teaching on students needs. With the rise of online education platforms, there is a similar need for machines to track the knowledge of students and tailor their learning experience. This is known as the Knowledge Tracing (KT) problem in the literature. Effectively solving the KT problem would unlock the potential of computer-aided education applications such as intelligent tutoring systems, curriculum learning, and learning materials' recommendation. Moreover, from a more general viewpoint, a student may represent any kind of intelligent agents including both human and artificial agents. Thus, the potential of KT can be extended to any machine teaching application scenarios which seek for customizing the learning experience for a student agent (i.e., a machine learning model). In this paper, we provide a comprehensive and systematic review for the KT literature. We cover a broad range of methods starting from the early attempts to the recent state-of-the-art methods using deep learning, while highlighting the theoretical aspects of models and the characteristics of benchmark datasets. Besides these, we shed light on key modelling differences between closely related methods and summarize them in an easy-to-understand format. Finally, we discuss current research gaps in the KT literature and possible future research and application directions.