Knowledge Query Network for Knowledge Tracing: How Knowledge Interacts with Skills

Jinseok Lee, D. Yeung
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引用次数: 35

Abstract

Knowledge Tracing (KT) is to trace the knowledge of students as they solve a sequence of problems represented by their related skills. This involves abstract concepts of students' states of knowledge and the interactions between those states and skills. Therefore, a KT model is designed to predict whether students will give correct answers and to describe such abstract concepts. However, existing methods either give relatively low prediction accuracy or fail to explain those concepts intuitively. In this paper, we propose a new model called Knowledge Query Network (KQN) to solve these problems. KQN uses neural networks to encode student learning activities into knowledge state and skill vectors, and models the interactions between the two types of vectors with the dot product. Through this, we introduce a novel concept called probabilistic skill similarity that relates the pairwise cosine and Euclidean distances between skill vectors to the odds ratios of the corresponding skills, which makes KQN interpretable and intuitive. On four public datasets, we have carried out experiments to show the following: 1. KQN outperforms all the existing KT models based on prediction accuracy. 2. The interaction between the knowledge state and skills can be visualized for interpretation. 3. Based on probabilistic skill similarity, a skill domain can be analyzed with clustering using the distances between the skill vectors of KQN. 4. For different values of the vector space dimensionality, KQN consistently exhibits high prediction accuracy and a strong positive correlation between the distance matrices of the skill vectors.
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面向知识追踪的知识查询网络:知识与技能的相互作用
知识追踪(KT)是指在学生解决一系列以相关技能为代表的问题时,对学生的知识进行追踪。这涉及到学生知识状态的抽象概念,以及这些状态和技能之间的相互作用。因此,设计了KT模型来预测学生是否会给出正确的答案,并描述这些抽象的概念。然而,现有的方法要么给出相对较低的预测精度,要么不能直观地解释这些概念。为了解决这些问题,本文提出了一种新的知识查询网络(KQN)模型。KQN利用神经网络将学生的学习活动编码为知识状态和技能向量,并用点积对两类向量之间的相互作用进行建模。通过这一点,我们引入了一个新的概念,称为概率技能相似性,将技能向量之间的成对余弦和欧几里得距离与相应技能的比值比联系起来,使KQN具有可解释性和直观性。在四个公共数据集上,我们进行了实验,结果表明:1。基于预测精度,KQN优于所有现有的KT模型。2. 知识状态和技能之间的相互作用可以可视化,以便解释。3.基于概率技能相似度,利用KQN的技能向量之间的距离对技能域进行聚类分析。4. 对于不同的向量空间维数,KQN均具有较高的预测精度,且技能向量距离矩阵之间具有较强的正相关关系。
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