MoocRadar: A Fine-grained and Multi-aspect Knowledge Repository for
Improving Cognitive Student Modeling in MOOCs
- URL: http://arxiv.org/abs/2304.02205v1
- Date: Wed, 5 Apr 2023 03:36:40 GMT
- Title: MoocRadar: A Fine-grained and Multi-aspect Knowledge Repository for
Improving Cognitive Student Modeling in MOOCs
- Authors: Jifan Yu, Mengying Lu, Qingyang Zhong, Zijun Yao, Shangqing Tu,
Zhengshan Liao, Xiaoya Li, Manli Li, Lei Hou, Hai-Tao Zheng, Juanzi Li, Jie
Tang
- Abstract summary: We present MoocRadar, a fine-grained, multi-aspect knowledge repository consisting of 2,513 exercise questions, 5,600 knowledge concepts, and over 12 million behavioral records.
Specifically, we propose a framework to guarantee a high-quality and comprehensive annotation of fine-grained concepts and cognitive labels.
- Score: 39.22242712254446
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Student modeling, the task of inferring a student's learning characteristics
through their interactions with coursework, is a fundamental issue in
intelligent education. Although the recent attempts from knowledge tracing and
cognitive diagnosis propose several promising directions for improving the
usability and effectiveness of current models, the existing public datasets are
still insufficient to meet the need for these potential solutions due to their
ignorance of complete exercising contexts, fine-grained concepts, and cognitive
labels. In this paper, we present MoocRadar, a fine-grained, multi-aspect
knowledge repository consisting of 2,513 exercise questions, 5,600 knowledge
concepts, and over 12 million behavioral records. Specifically, we propose a
framework to guarantee a high-quality and comprehensive annotation of
fine-grained concepts and cognitive labels. The statistical and experimental
results indicate that our dataset provides the basis for the future
improvements of existing methods. Moreover, to support the convenient usage for
researchers, we release a set of tools for data querying, model adaption, and
even the extension of our repository, which are now available at
https://github.com/THU-KEG/MOOC-Radar.
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