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A survey on deep learning based knowledge tracing

journal contribution
posted on 2023-02-14, 03:39 authored by X Song, Jianxin LiJianxin Li, T Cai, S Yang, T Yang, C Liu
“Knowledge tracing (KT)” is an emerging and popular research topic in the field of online education that seeks to assess students’ mastery of a concept based on their historical learning of relevant exercises on an online education system in order to make the most accurate prediction of student performance. Since there have been a large number of KT models, we attempt to systematically investigate, compare and discuss different aspects of KT models to find out the differences between these models in order to better assist researchers in this field. The findings of this study have made substantial contributions to the progress of online education, which is especially relevant in light of the current global pandemic. As a result of the current expansion of deep learning methods over the last decade, researchers have been tempted to include deep learning strategies into KT research with astounding results. In this paper, we evaluate current research on deep learning-based KT in the main categories listed below. In particular, we explore (1) a granular categorisation of the technological solutions presented by the mainstream Deep Learning-based KT Models. (2) a detailed analysis of techniques to KT, with a special emphasis on Deep Learning-based KT Models. (3) an analysis of the technological solutions and major improvement presented by Deep Learning-based KT models. In conclusion, we discuss possible future research directions in the field of Deep Learning-based KT.

History

Journal

Knowledge-Based Systems

Volume

258

Article number

ARTN 110036

ISSN

0950-7051

eISSN

1872-7409

Language

English

Publication classification

C1 Refereed article in a scholarly journal

Publisher

ELSEVIER