论文标题
在线教室中的教师问题检测的神经多任务学习
Neural Multi-Task Learning for Teacher Question Detection in Online Classrooms
论文作者
论文摘要
提出问题是教师在课堂上使用的最关键的教学技术之一。它不仅提供教师和学生之间的开放性讨论来交流思想,还激发了更深入的学生思想和批判性分析。为教师提供这种教学反馈,将显着帮助教师在课堂上提高其整体教学质量。因此,在这项工作中,我们建立了一个端到端的神经框架,该框架自动从教师的录音中检测到问题。与传统方法相比,我们的方法不仅避免了繁琐的功能工程,而且还适应了在实际教育方案中多级问题检测的任务。通过结合多任务学习技术,我们能够加强对不同类型问题之间语义关系的理解。我们在现实世界中的在线课堂数据集中进行了有关问题检测任务的广泛实验,结果证明了我们模型在各种评估指标方面的优越性。
Asking questions is one of the most crucial pedagogical techniques used by teachers in class. It not only offers open-ended discussions between teachers and students to exchange ideas but also provokes deeper student thought and critical analysis. Providing teachers with such pedagogical feedback will remarkably help teachers improve their overall teaching quality over time in classrooms. Therefore, in this work, we build an end-to-end neural framework that automatically detects questions from teachers' audio recordings. Compared with traditional methods, our approach not only avoids cumbersome feature engineering, but also adapts to the task of multi-class question detection in real education scenarios. By incorporating multi-task learning techniques, we are able to strengthen the understanding of semantic relations among different types of questions. We conducted extensive experiments on the question detection tasks in a real-world online classroom dataset and the results demonstrate the superiority of our model in terms of various evaluation metrics.