自动的,以内容为中心的反馈在本科有机化学课程的写作学习作业

Field M. Watts, Amber J. Dood, G. Shultz
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引用次数: 4

摘要

写作学习(WTL)教学法支持在STEM课程中实施写作作业,以吸引学生参与概念学习。最近在本科STEM背景下的研究证明了实施WTL的价值,发现WTL可以支持有意义的学习并引发学生的推理。然而,教师需要对学生的写作提供反馈,这对实施WTL构成了重大障碍;这一障碍在大型大学的有机化学入门课程中尤其明显,因为这些大学通常有大量的入学人数。这项工作描述了一种克服这一障碍的方法,通过展示一种自动反馈工具的开发,为学生提供关于他们对有机化学WTL作业的反应的形成性反馈。在第二学期的有机化学实验导论课程中,这种方法利用机器学习模型来识别学生对WTL作业的机械推理特征。自动反馈工具的开发由设计自动反馈的框架、自我调节学习的理论和有效的WTL教学法的组成部分指导。在此,我们描述了自动反馈工具的设计,并通过对有机化学学生的试点访谈报告了我们对该工具的初步评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automated, content-focused feedback for a writing-to-learn assignment in an undergraduate organic chemistry course
Writing-to-learn (WTL) pedagogy supports the implementation of writing assignments in STEM courses to engage students in conceptual learning. Recent studies in the undergraduate STEM context demonstrate the value of implementing WTL, with findings that WTL can support meaningful learning and elicit students’ reasoning. However, the need for instructors to provide feedback on students’ writing poses a significant barrier to implementing WTL; this barrier is especially notable in the context of introductory organic chemistry courses at large universities, which often have large enrollments. This work describes one approach to overcome this barrier by presenting the development of an automated feedback tool for providing students with formative feedback on their responses to an organic chemistry WTL assignment. This approach leverages machine learning models to identify features of students’ mechanistic reasoning in response to WTL assignments in a second-semester, introductory organic chemistry laboratory course. The automated feedback tool development was guided by a framework for designing automated feedback, theories of self-regulated learning, and the components of effective WTL pedagogy. Herein, we describe the design of the automated feedback tool and report our initial evaluation of the tool through pilot interviews with organic chemistry students.
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