论文标题
RKT:与知识追踪的关系意识到的自我关注
RKT : Relation-Aware Self-Attention for Knowledge Tracing
论文作者
论文摘要
为了应对最近的Covid19大流行,世界已转变为在线学习的新阶段。现在,比以往任何时候都更重要的是,以各种方式推动在线学习的限制以保持教育系统的蓬勃发展。在线学习的关键组成部分是知识追踪(KT)。 KT的目的是根据他们对一系列称为互动的练习的答案来对学生的知识水平进行建模。学生在解决练习的同时获得技能,每一次这种互动都会对学生解决未来练习的能力产生明显的影响。此\ textit {famcy}的特征是1)互动中涉及的练习与2)学生忘记行为之间的关系。关于知识追踪的传统研究并不能明确地对两个组成部分进行联合建模,以估计这些相互作用的影响。在本文中,我们提出了一种新颖的关系知识追踪的自我注意力学模型(RKT)。我们介绍了一个关系感知的自我发项层,其中包含上下文信息。该上下文信息通过其文本内容以及学生绩效数据以及忘记行为信息通过建模指数衰减的内核功能来整合练习关系信息。在三个现实世界数据集上进行了广泛的实验,其中有两个新的收藏集向公众发布,这表明我们的模型表现优于最先进的知识追踪方法。此外,可解释的注意力权重有助于可视化人类学习过程中的相互作用与时间模式之间的关系。
The world has transitioned into a new phase of online learning in response to the recent Covid19 pandemic. Now more than ever, it has become paramount to push the limits of online learning in every manner to keep flourishing the education system. One crucial component of online learning is Knowledge Tracing (KT). The aim of KT is to model student's knowledge level based on their answers to a sequence of exercises referred as interactions. Students acquire their skills while solving exercises and each such interaction has a distinct impact on student ability to solve a future exercise. This \textit{impact} is characterized by 1) the relation between exercises involved in the interactions and 2) student forget behavior. Traditional studies on knowledge tracing do not explicitly model both the components jointly to estimate the impact of these interactions. In this paper, we propose a novel Relation-aware self-attention model for Knowledge Tracing (RKT). We introduce a relation-aware self-attention layer that incorporates the contextual information. This contextual information integrates both the exercise relation information through their textual content as well as student performance data and the forget behavior information through modeling an exponentially decaying kernel function. Extensive experiments on three real-world datasets, among which two new collections are released to the public, show that our model outperforms state-of-the-art knowledge tracing methods. Furthermore, the interpretable attention weights help visualize the relation between interactions and temporal patterns in the human learning process.