Knowledge Tracing: A Survey

Author:

Abdelrahman Ghodai1ORCID,Wang Qing1ORCID,Nunes Bernardo1ORCID

Affiliation:

1. School of Computing, Australian National University, Acton, Canberra, ACT, Australia

Abstract

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 survey 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.

Funder

Australian government higher education scholarship (Ghodai Abdelrahman), ANU Vice-Chancellor’s Teaching Enhancement Grant

Publisher

Association for Computing Machinery (ACM)

Subject

General Computer Science,Theoretical Computer Science

Reference134 articles.

1. Ghodai Abdelrahman and Qing Wang. 2019. Knowledge tracing with sequential key-value memory networks. In SIGIR. 175–184.

2. Learning data teaching strategies via knowledge tracing;Abdelrahman Ghodai;arXiv preprint arXiv:2111.07083,2021

3. Deep graph memory networks for forgetting-robust knowledge tracing;Abdelrahman Ghodai;TKDE,2022

4. Effect of mobile gaming on mathematical achievement among 4th graders.;Khateeb Mohammad Ahmad Al;IJET,2019

5. John R. Anderson et al. 1986. Cognitive modelling and intelligent tutoring. (1986).

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