Existing work on generating hints in Intelligent Tutoring Systems (ITS) focuses mostly on manual and non-personalized feedback. In this work, we explore automatically generated questions as personalized feedback in an ITS. Our personalized feedback can pinpoint correct and incorrect or missing phrases in student answers as well as guide them towards correct answer by asking a question in natural language. Our approach combines cause-effect analysis to break down student answers using text similarity-based NLP Transformer models to identify correct and incorrect or missing parts. We train a few-shot Neural Question Generation and Question Re-ranking models to show questions addressing components missing in the student answers which steers students towards the correct answer. Our model vastly outperforms both simple and strong baselines in terms of student learning gains by 45% and 23% respectively when tested in a real dialogue-based ITS. Finally, we show that our personalized corrective feedback system has the potential to improve Generative Question Answering systems.
翻译:在智能教学系统(ITS)中产生提示的现有工作主要侧重于手动和非个性化反馈。在这项工作中,我们探索了自动产生的问题,作为ITS中个人化反馈。我们的个性化反馈可以用自然语言找出学生答案中的正确和不正确或缺失的短语,并指导他们找到正确的答案。我们的方法结合了因果关系分析,用基于文本相似的NLP变换模型来打破学生的答案,以识别正确和不正确或缺失的部分。我们训练了几发神经质问题生成和问题排序模型,以显示学生回答中缺失的元素,引导学生找到正确的答案。我们的模型在以真实对话为基础的ITS进行测试时,在学生学习收益方面分别超过45%和23%的简单和强大的基线。最后,我们展示了我们个性化的纠正反馈系统有潜力改进引力问答系统。