Informative representations for forgetting-robust knowledge tracing

IF 3 3区 计算机科学 Q2 COMPUTER SCIENCE, CYBERNETICS
Zhiyu Chen, Zhilong Shan, Yanhua Zeng
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引用次数: 0

Abstract

Tracing a student’s knowledge state is critical for teaching and learning. Knowledge tracing aims to accurately predict student performance by analyzing historical records on online education platforms. Most studies have focused on a student’s skill with interactions sequence to predict the probability of correctly answering the latest question. However, they still suffer from the challenge of information sparsity and student forgetting. Specifically, the relationship between question and skill, and the features related to question texts have not been integrated to enrich information exploration. Besides, modeling forgetting behavior remains a challenge in assessing a student’s learning gains. In this paper, we present a novel model, namely Informative Representations for Forgetting-Robust Knowledge Tracing (IFKT). IFKT utilizes a light graph convolutional network to capture various relational structures via embedding propagation. Then, the embeddings are assembled with rich interaction features separately as the powerful representation. Furthermore, attention weights assignments are individualized using the relative positions, in addition to the relevance between the current question with historical interaction representations. Finally, we compare IFKT against seven knowledge tracing baselines on three real-world benchmark datasets, demonstrating the superiority of the proposed model.

Abstract Image

用于健忘知识追踪的信息表征
追踪学生的知识状态对教学至关重要。知识追踪旨在通过分析在线教育平台上的历史记录,准确预测学生的学习成绩。大多数研究都侧重于学生的交互序列技能,以预测正确回答最新问题的概率。然而,这些研究仍然面临信息稀疏和学生遗忘的挑战。具体来说,问题与技能之间的关系以及与问题文本相关的特征尚未被整合以丰富信息探索。此外,遗忘行为建模仍是评估学生学习效果的一个难题。在本文中,我们提出了一种新型模型,即 "遗忘-稳健知识追踪的信息表征"(IFKT)。IFKT 利用轻图卷积网络,通过嵌入传播捕捉各种关系结构。然后,将嵌入分别与丰富的交互特征组装在一起,作为强大的表征。此外,除了当前问题与历史交互表征之间的相关性外,还利用相对位置对注意力权重分配进行了个性化处理。最后,我们将 IFKT 与三个真实世界基准数据集上的七个知识追踪基线进行了比较,证明了所提模型的优越性。
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来源期刊
User Modeling and User-Adapted Interaction
User Modeling and User-Adapted Interaction 工程技术-计算机:控制论
CiteScore
8.90
自引率
8.30%
发文量
35
审稿时长
>12 weeks
期刊介绍: User Modeling and User-Adapted Interaction provides an interdisciplinary forum for the dissemination of novel and significant original research results about interactive computer systems that can adapt themselves to their users, and on the design, use, and evaluation of user models for adaptation. The journal publishes high-quality original papers from, e.g., the following areas: acquisition and formal representation of user models; conceptual models and user stereotypes for personalization; student modeling and adaptive learning; models of groups of users; user model driven personalised information discovery and retrieval; recommender systems; adaptive user interfaces and agents; adaptation for accessibility and inclusion; generic user modeling systems and tools; interoperability of user models; personalization in areas such as; affective computing; ubiquitous and mobile computing; language based interactions; multi-modal interactions; virtual and augmented reality; social media and the Web; human-robot interaction; behaviour change interventions; personalized applications in specific domains; privacy, accountability, and security of information for personalization; responsible adaptation: fairness, accountability, explainability, transparency and control; methods for the design and evaluation of user models and adaptive systems
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