Wang Zhifeng, Wu Wanxuan, Zeng Chunyan, Luo Heng, Sun Jianwen
Faculty of Artificial Intelligence in Education, Central China Normal University, Wuhan, China.
CCNU Wollongong Joint Institute, Central China Normal University, Wuhan, China.
Front Psychol. 2024 May 10;15:1359199. doi: 10.3389/fpsyg.2024.1359199. eCollection 2024.
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.
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.
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.
随着在线教育的迅速扩张,教育科技领域对提供符合学生个人能力和需求的个性化学习体验的兴趣日益浓厚。在此框架内,知识追踪任务已引起广泛关注。知识追踪的主要目标是开发一种模型,该模型根据学生在练习中的历史表现评估其在特定技能方面的熟练程度,从而能够预测学生在未来练习中做出正确回答的可能性。虽然现有的知识追踪模型通常会纳入学生的练习回答历史和技能掌握水平等信息,但它们往往忽略了学生在学习过程中的心理状态。
本文通过引入一种新颖的心理因素增强型异构学习交互图知识追踪模型(Psy-KT)来弥补这一差距。该模型通过异构图描绘学生、练习和技能之间的交互,并补充了四个捕捉学生学习过程中心理状态的心理因素:挫折水平、困惑水平、专注水平和厌倦水平。在对学生学习过程进行建模时,我们纳入遗忘曲线并从特征中构建相关认知参数。此外,我们采用项目反应理论(IRT)模型来预测学生在下一个时间步回答练习的表现。该模型不仅深入研究了学生在学习过程中的心理方面,还整合了遗忘这一学习过程中的自然现象的模拟。认知参数的纳入增强了对学生在整个学习过程中能力变化的描述。这种双重关注使得能够更全面地理解学生的学习行为,同时为模型提供了高度的可解释性。
使用四个公开可用的数据集对Psy-KT模型进行了实证验证,证明了其在预测学生未来表现方面的卓越性能。通过严格的实验,Psy-KT模型中心理和遗忘因素的整合不仅提高了预测准确性,还使教育工作者能够提供更有针对性的辅导和建议,提高了学习体验的整体效果。