Xu Feng, Chen Kang, Zhong Maosheng, Liu Lei, Liu Huizhu, Luo Xianzeng, Zheng Lang
Jiangxi Provincial Education Institute, Jiangxi, China.
College of Computer and Information Engineering, Jiangxi Normal University, Jiangxi, China.
PLoS One. 2024 Oct 30;19(10):e0312022. doi: 10.1371/journal.pone.0312022. eCollection 2024.
Knowledge tracing is a technology that models students' changing knowledge state over learning time based on their historical answer records, thus predicting their learning ability. It is the core module that supports the intelligent education system. To address the problems of sparse input data, lack of interpretability and weak capacity to capture the relationship between exercises in the existing models, this paper build a deep knowledge tracing model DKVMN&MRI based on the Dynamic Key-Value Memory Network (DKVMN) that incorporates multiple relationship information including exercise-knowledge point relations, exercise-exercise relations, and learning-forgetting relations. In the model, firstly, the Q-matrix is utilized to map the link between knowledge points and exercises to the input layer; secondly, improved DKVMN and LSTM are used to model the learning process of learners, then the Ebbinghaus forgetting curve function is introduced to simulate the process of memory forgetting in learners, and finally, the prediction strategies of Item Response Theory (IRT) and attention mechanism are used to combine the similarity relationship between learners' knowledge state and exercises to calculate the probability that learners would correctly respond during the subsequent time step. Through extensive experiments on three real-world datasets, we demonstrate that DKVMN&MRI has significant improvements in both AUC and ACC metrics contrast with the latest models. Furthermore, the study provides explanations at both the exercise level and learner knowledge state level, demonstrating the interpretability and efficacy of the proposed model.
知识追踪是一种基于学生历史答题记录来建模其学习过程中知识状态变化的技术,从而预测其学习能力。它是支持智能教育系统的核心模块。针对现有模型中输入数据稀疏、缺乏可解释性以及对练习之间的关系捕捉能力较弱等问题,本文基于动态关键值记忆网络(DKVMN)构建了一个深度知识追踪模型 DKVMN&MRI,该模型融合了包括练习-知识点关系、练习-练习关系和学习-遗忘关系在内的多种关系信息。在模型中,首先利用 Q 矩阵将知识点与练习之间的联系映射到输入层;其次,采用改进的 DKVMN 和 LSTM 来建模学习者的学习过程,然后引入艾宾浩斯遗忘曲线函数来模拟学习者记忆遗忘的过程,最后采用项目反应理论(IRT)和注意力机制的预测策略来结合学习者知识状态和练习之间的相似关系,计算学习者在后续时间步正确作答的概率。通过在三个真实数据集上的广泛实验,我们证明了 DKVMN&MRI 在 AUC 和 ACC 指标上与最新模型相比有显著的提升。此外,该研究还提供了练习层面和学习者知识状态层面的解释,展示了所提出模型的可解释性和有效性。