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Main Authors: Wang, Fei, Gao, Weibo, Liu, Qi, Li, Jiatong, Zhao, Guanhao, Zhang, Zheng, Huang, Zhenya, Zhu, Mengxiao, Wang, Shijin, Tong, Wei, Chen, Enhong
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2407.05458
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author Wang, Fei
Gao, Weibo
Liu, Qi
Li, Jiatong
Zhao, Guanhao
Zhang, Zheng
Huang, Zhenya
Zhu, Mengxiao
Wang, Shijin
Tong, Wei
Chen, Enhong
author_facet Wang, Fei
Gao, Weibo
Liu, Qi
Li, Jiatong
Zhao, Guanhao
Zhang, Zheng
Huang, Zhenya
Zhu, Mengxiao
Wang, Shijin
Tong, Wei
Chen, Enhong
contents Cognitive diagnosis has been developed for decades as an effective measurement tool to evaluate human cognitive status such as ability level and knowledge mastery. It has been applied to a wide range of fields including education, sport, psychological diagnosis, etc. By providing better awareness of cognitive status, it can serve as the basis for personalized services such as well-designed medical treatment, teaching strategy and vocational training. This paper aims to provide a survey of current models for cognitive diagnosis, with more attention on new developments using machine learning-based methods. By comparing the model structures, parameter estimation algorithms, model evaluation methods and applications, we provide a relatively comprehensive review of the recent trends in cognitive diagnosis models. Further, we discuss future directions that are worthy of exploration. In addition, we release two Python libraries: EduData for easy access to some relevant public datasets we have collected, and EduCDM that implements popular CDMs to facilitate both applications and research purposes.
format Preprint
id arxiv_https___arxiv_org_abs_2407_05458
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle A Survey of Models for Cognitive Diagnosis: New Developments and Future Directions
Wang, Fei
Gao, Weibo
Liu, Qi
Li, Jiatong
Zhao, Guanhao
Zhang, Zheng
Huang, Zhenya
Zhu, Mengxiao
Wang, Shijin
Tong, Wei
Chen, Enhong
Artificial Intelligence
Cognitive diagnosis has been developed for decades as an effective measurement tool to evaluate human cognitive status such as ability level and knowledge mastery. It has been applied to a wide range of fields including education, sport, psychological diagnosis, etc. By providing better awareness of cognitive status, it can serve as the basis for personalized services such as well-designed medical treatment, teaching strategy and vocational training. This paper aims to provide a survey of current models for cognitive diagnosis, with more attention on new developments using machine learning-based methods. By comparing the model structures, parameter estimation algorithms, model evaluation methods and applications, we provide a relatively comprehensive review of the recent trends in cognitive diagnosis models. Further, we discuss future directions that are worthy of exploration. In addition, we release two Python libraries: EduData for easy access to some relevant public datasets we have collected, and EduCDM that implements popular CDMs to facilitate both applications and research purposes.
title A Survey of Models for Cognitive Diagnosis: New Developments and Future Directions
topic Artificial Intelligence
url https://arxiv.org/abs/2407.05458