论文标题

在课堂话语中,计算识别漏斗和集中问题

Computationally Identifying Funneling and Focusing Questions in Classroom Discourse

论文作者

Alic, Sterling, Demszky, Dorottya, Mancenido, Zid, Liu, Jing, Hill, Heather, Jurafsky, Dan

论文摘要

响应式教学是一种促进学生学习的高效策略。在数学课堂中,教师可能会“向学生求助”规范的答案或“焦点”学生,以反思自己的思想,加深对数学概念的理解。当教师专注时,他们将学生的贡献视为集体感官的资源,从而大大提高了学生对数学的成就和信心。我们提出了在课堂话语中检测到漏斗和关注问题的计算任务。我们这样做是通过创建和发布2,348个指定的指定漏斗和集中问题的教师话语的注释数据集,或者没有。我们介绍了有监督和无监督的方法来区分这些问题。我们的最佳模型是在我们的数据集上微调的监督罗伯塔模型,与人类专家标签的线性相关性很强,并具有积极的教育成果,包括数学教学质量和学生成就,显示了该模型在自动教师反馈工具中使用的潜力。我们的无监督措施显示出与人类标签和结果的显着但较弱的相关性,它们突出了有趣的语言模式的漏斗模式和关注问题。监督措施的高性能表明了其在教师指导中支持教师的承诺。

Responsive teaching is a highly effective strategy that promotes student learning. In math classrooms, teachers might "funnel" students towards a normative answer or "focus" students to reflect on their own thinking, deepening their understanding of math concepts. When teachers focus, they treat students' contributions as resources for collective sensemaking, and thereby significantly improve students' achievement and confidence in mathematics. We propose the task of computationally detecting funneling and focusing questions in classroom discourse. We do so by creating and releasing an annotated dataset of 2,348 teacher utterances labeled for funneling and focusing questions, or neither. We introduce supervised and unsupervised approaches to differentiating these questions. Our best model, a supervised RoBERTa model fine-tuned on our dataset, has a strong linear correlation of .76 with human expert labels and with positive educational outcomes, including math instruction quality and student achievement, showing the model's potential for use in automated teacher feedback tools. Our unsupervised measures show significant but weaker correlations with human labels and outcomes, and they highlight interesting linguistic patterns of funneling and focusing questions. The high performance of the supervised measure indicates its promise for supporting teachers in their instruction.

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