Knowledge Tracing Through Enhanced Questions and Directed Learning Interaction Based on Multigraph Embeddings in Intelligent Tutoring Systems

IF 2 2区 工程技术 Q2 EDUCATION, SCIENTIFIC DISCIPLINES
Liqing Qiu;Lulu Wang
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引用次数: 0

Abstract

In recent years, knowledge tracing (KT) within intelligent tutoring systems (ITSs) has seen rapid development. KT aims to assess a student’s knowledge state based on past performance and predict the correctness of the next question. Traditional KT often treats questions with different difficulty levels of the same concept as identical representations, limiting the effectiveness of question embedding. Additionally, higher-order semantic relationships between questions are overlooked. Graph models have been employed in KT to enhance question embedding representation, but they rarely consider the directed relationships between learning interactions. Therefore, this article introduces a novel approach, KT through Enhanced Questions and Directed Learning Interaction Based on multigraph embeddings in ITSs (MGEKT), to address these limitations. One channel enhances question embedding representation by capturing relationships between students, concepts, and questions. This channel defines two meta paths, facilitating the learning of high-order semantic relationships between questions. The other channel constructs a directed graph of learning interactions, leveraging graph attention convolution to illustrate their intricate relationships. A new gating mechanism is proposed to capture long-term dependencies and emphasize critical information when tracing students’ knowledge states. Notably, MGEKT employs reverse knowledge distillation, transferring knowledge from two small models (student models) to a large model (teacher model). This knowledge distillation enhances the model’s generalization performance and improves the perception of crucial information. In comparative evaluations across four datasets, MGEKT outperformed baselines, demonstrating its effectiveness in KT.
通过智能辅导系统中基于多图嵌入的强化问题和定向学习交互进行知识追踪
近年来,智能辅导系统(ITSs)中的知识追踪(KT)得到了迅速发展。KT的目的是根据学生过去的表现来评估学生的知识状态,并预测下一题的正确性。传统的KT通常将同一概念的不同难度级别的问题视为相同的表示,限制了问题嵌入的有效性。此外,问题之间的高阶语义关系被忽略了。图模型已被应用于KT中以增强问题嵌入表示,但它们很少考虑学习交互之间的直接关系。因此,本文介绍了一种新颖的方法,即基于its中多图嵌入的增强问题和定向学习交互的KT (MGEKT),以解决这些限制。一个通道通过捕获学生、概念和问题之间的关系来增强问题嵌入表示。该通道定义了两个元路径,促进了问题之间高阶语义关系的学习。另一个通道构建了一个学习交互的有向图,利用图注意卷积来说明它们之间复杂的关系。在跟踪学生的知识状态时,提出了一种新的门控机制来捕捉长期依赖关系并强调关键信息。值得注意的是,MGEKT采用逆向知识蒸馏,将知识从两个小模型(学生模型)转移到一个大模型(教师模型)。这种知识蒸馏提高了模型的泛化性能,提高了对关键信息的感知。在四个数据集的比较评估中,MGEKT优于基线,证明了其在KT中的有效性。
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来源期刊
IEEE Transactions on Education
IEEE Transactions on Education 工程技术-工程:电子与电气
CiteScore
5.80
自引率
7.70%
发文量
90
审稿时长
1 months
期刊介绍: The IEEE Transactions on Education (ToE) publishes significant and original scholarly contributions to education in electrical and electronics engineering, computer engineering, computer science, and other fields within the scope of interest of IEEE. Contributions must address discovery, integration, and/or application of knowledge in education in these fields. Articles must support contributions and assertions with compelling evidence and provide explicit, transparent descriptions of the processes through which the evidence is collected, analyzed, and interpreted. While characteristics of compelling evidence cannot be described to address every conceivable situation, generally assessment of the work being reported must go beyond student self-report and attitudinal data.
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