基于概念结构的知识跟踪动态键值记忆网络

Hengnian Gu, Xiaoxiao Dong, Dong-dai Zhou
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引用次数: 1

摘要

知识追踪是自适应个性化辅助学习领域的一个热门研究课题。近年来,随着大数据驱动和深度学习的发展,出现了一种基于递归神经网络的深度知识追踪(Deep Knowledge Tracing, DKT)模型。然而,学生在DKT模型中具体掌握了哪些概念是不可能的,因此出现了一种基于动态键值记忆网络(DKVMN)的深度知识跟踪模型,该模型使用静态键矩阵存储知识概念,使用动态值矩阵存储相应概念的掌握程度。尽管DKVMN模型明确地挑出概念进行单独处理,但它没有考虑概念之间的关联关系。尽管它可以挖掘潜在关联,但我们认为这还远远不够,因此我们提出了一种基于概念结构的DKVMN模型(DKVMN- cs),该模型通过概念结构图将概念关联关系引入先验知识,既作用于存储概念的静态矩阵,又作用于值矩阵的权重计算。实验表明,与DKVMN等主流深度知识跟踪模型相比,我们提出的DKVMN- cs模型在性能指标上有显著提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dynamic Key-Value Memory Networks based on Concept Structure for Knowledge Tracing
Knowledge tracing (KT) is a popular research topic in adaptive personalized assisted learning. In recent years, a Deep Knowledge Tracing (DKT) model based on recurrent neural networks has emerged based on the development of big data-driven and deep learning. However, it is impossible to specify which specific concepts students are proficient in the DKT model, so a deep knowledge tracing model based on a dynamic key-value memory network (DKVMN) emerges, which uses a static key matrix to store knowledge concepts and a dynamic value matrix to store the mastery of corresponding concepts. Although the DKVMN model explicitly singles out concepts for individual processing, it does not consider the association relationship between concepts. Even though it can mine the potential association, we think it is far from enough, so we propose a DKVMN model based on concept structure (DKVMN-CS), which introduces the concept association relationship a priori knowledge through concept structure graph, acting on both the static matrix of stored concepts and the weight calculation of the value matrix. Experiments show that our proposed DKVMN-CS model has a significant improvement in performance metrics compared to mainstream deep knowledge tracking models such as DKVMN.
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