论文标题
动态知识嵌入和追踪
Dynamic Knowledge embedding and tracing
论文作者
论文摘要
知识追踪的目的是跟踪学生随着时间的推移发展的状态。这在理解学习过程中起着基本作用,并且是智能辅导系统开发的关键任务。在本文中,我们提出了一种新颖的知识追踪方法,将矩阵分解的技术与重复的神经网络(RNN)的最新进展相结合,以有效地跟踪学生知识的状态。提出的\ emph {dynemb}框架即使没有其他知识追踪模型所需的概念/技能标签信息,同时实现了卓越的表现,也可以跟踪学生知识。我们提供了实验评估,表明Dynemb与基准相比可以提高性能,并说明了所提出框架的鲁棒性和有效性。我们还使用几个现实世界数据集评估了我们的方法,表明所提出的模型的表现优于先前的最新模型。这些结果表明,将嵌入模型与诸如RNN之类的顺序模型相结合是知识追踪的新方向。
The goal of knowledge tracing is to track the state of a student's knowledge as it evolves over time. This plays a fundamental role in understanding the learning process and is a key task in the development of an intelligent tutoring system. In this paper we propose a novel approach to knowledge tracing that combines techniques from matrix factorization with recent progress in recurrent neural networks (RNNs) to effectively track the state of a student's knowledge. The proposed \emph{DynEmb} framework enables the tracking of student knowledge even without the concept/skill tag information that other knowledge tracing models require while simultaneously achieving superior performance. We provide experimental evaluations demonstrating that DynEmb achieves improved performance compared to baselines and illustrating the robustness and effectiveness of the proposed framework. We also evaluate our approach using several real-world datasets showing that the proposed model outperforms the previous state-of-the-art. These results suggest that combining embedding models with sequential models such as RNNs is a promising new direction for knowledge tracing.