Psychological factors enhanced heterogeneous learning interactive graph knowledge tracing for understanding the learning process

被引:0
|
作者
Wang, Zhifeng [1 ,2 ]
Wu, Wanxuan [2 ]
Zeng, Chunyan [3 ]
Luo, Heng [1 ]
Sun, Jianwen [1 ]
机构
[1] Cent China Normal Univ, Fac Artificial Intelligence Educ, Wuhan, Peoples R China
[2] Cent China Normal Univ, CCNU Wollongong Joint Inst, Wuhan, Peoples R China
[3] Hubei Univ Technol, Hubei Key Lab High Efficiency Utilizat Solar Energ, Wuhan, Peoples R China
来源
FRONTIERS IN PSYCHOLOGY | 2024年 / 15卷
基金
中国国家自然科学基金; 国家重点研发计划;
关键词
psychological factors; knowledge tracing; Graph Neural Network; Item Response Theory; learning process;
D O I
10.3389/fpsyg.2024.1359199
中图分类号
B84 [心理学];
学科分类号
04 ; 0402 ;
摘要
Introduction With the rapid expansion of online education, there is a burgeoning interest within the EdTech space to offer tailored learning experiences that cater to individual student's abilities and needs. Within this framework, knowledge tracing tasks have garnered considerable attention. The primary objective of knowledge tracing is to develop a model that assesses a student's proficiency in a particular skill based on their historical performance in exercises, enabling predictions regarding the likelihood of correct responses in future exercises. While existing knowledge tracing models often incorporate information such as students' exercise answering history and skill mastery level, they frequently overlook the students' mental states during the learning process.Methods This paper addresses this gap by introducing a novel psychological factors-enhanced heterogeneous learning interactive graph knowledge tracing model (Psy-KT). This model delineates the interactions among students, exercises, and skills through a heterogeneous graph, supplementing it with four psychological factors that capture students' mental states during the learning process: frustration level, confusion level, concentration level, and boredom level. In the modeling of students' learning processes, we incorporate the forgetting curve and construct relevant cognitive parameters from the features. Additionally, we employ the Item Response Theory (IRT) model to predict students' performance in answering exercises at the subsequent time step. This model not only delves into the psychological aspects of students during the learning process but also integrates the simulation of forgetting, a natural phenomenon in the learning journey. The inclusion of cognitive parameters enhances the description of changes in students' abilities throughout the learning process. This dual focus allows for a more comprehensive understanding of students' learning behaviors while providing a high level of interpretability for the model.Results and discussion Empirical validation of the Psy-KT model is conducted using four publicly available datasets, demonstrating its superior performance in predicting students' future performance. Through rigorous experimentation, the integration of psychological and forgetting factors in the Psy-KT model not only improves predictive accuracy but also enables educators to offer more targeted tutoring and advice, enhancing the overall efficacy of the learning experience.
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页数:24
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