论文标题
从多种学习资源类型中对知识获取进行建模
Modeling Knowledge Acquisition from Multiple Learning Resource Types
论文作者
论文摘要
学生在与各种学习材料互动时获得知识,例如视频讲座,问题和讨论。在学习期间的每个点对学生的知识进行建模,并了解每种学习材料对学生知识的贡献对于检测学生的知识差距和推荐学习材料至关重要。当前的学生知识建模技术主要依赖于一种学习材料(主要是问题)来模拟学生知识的增长。这些方法忽略了学生也从其他类型的材料中学习的事实。在本文中,我们提出了一个学生知识模型,该模型可以从各种学习资源类型中学习,同时揭示不同类型的学习材料之间的关联,从而捕获知识增长。我们的多视图知识模型(MVKM)结合了多视图张量分解的灵活知识增加目标,以捕获偶尔的遗忘,同时代表低维的潜在空间中的学生知识和学习材料概念。我们在不同的实验中评估了我们的模型,它可以准确地预测学生的未来表现,区分不同学生群体和概念的知识增益,并在不同类型的学习材料之间揭示了隐藏的相似之处。
Students acquire knowledge as they interact with a variety of learning materials, such as video lectures, problems, and discussions. Modeling student knowledge at each point during their learning period and understanding the contribution of each learning material to student knowledge are essential for detecting students' knowledge gaps and recommending learning materials to them. Current student knowledge modeling techniques mostly rely on one type of learning material, mainly problems, to model student knowledge growth. These approaches ignore the fact that students also learn from other types of material. In this paper, we propose a student knowledge model that can capture knowledge growth as a result of learning from a diverse set of learning resource types while unveiling the association between the learning materials of different types. Our multi-view knowledge model (MVKM) incorporates a flexible knowledge increase objective on top of a multi-view tensor factorization to capture occasional forgetting while representing student knowledge and learning material concepts in a lower-dimensional latent space. We evaluate our model in different experiments toshow that it can accurately predict students' future performance, differentiate between knowledge gain in different student groups and concepts, and unveil hidden similarities across learning materials of different types.