以反馈为反馈:评级员对学生成绩的反馈构建

Serena Nicoll, K. Douglas, Christopher G. Brinton
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引用次数: 6

摘要

反馈是师生互动的关键因素:它为学生从错误中学习提供了一种直接的方式。然而,随着学生与教师比例的迅速增长,教师为个别学生提供高质量反馈的挑战出现了。虽然在自动化反馈生成方面做出了重大努力,但对潜在反馈特征的关注相对较少。我们开发了一种方法来分析教师提供的反馈,并利用在线高等教育工程教室的数据确定它与学生成绩变化的关系。具体来说,我们使用自然语言处理(NLP)技术(包括情感分析、重图式分割和命名实体识别(NER))对个人作业的书面反馈进行了特征化,以量化评分者写作的后、句子和词相关属性。我们证明,学生成绩的提高可以通过多元线性模型很好地近似,课程部分的平均拟合在67%到83%之间。我们确定了教师反馈中包含的对学生成功的几个统计上显著的贡献者和反对者。例如,我们的研究结果显示,学生姓名的加入与后反馈成绩的提高显著相关,特定作业相关关键词的加入也是如此。最后,我们讨论了如何将这种方法整合到教育技术系统中,以根据观察到的学生行为对反馈内容提出建议。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Giving Feedback on Feedback: An Assessment of Grader Feedback Construction on Student Performance
Feedback is a critical element of student-instructor interaction: it provides a direct manner for students to learn from mistakes. However, with student to teacher ratios growing rapidly, challenges arise for instructors to provide quality feedback to individual students. While significant efforts have been directed at automating feedback generation, relatively little attention has been given to underlying feedback characteristics. We develop a methodology for analyzing instructor-provided feedback and determining how it correlates with changes in student grades using data from online higher education engineering classrooms. Specifically, we featurize written feedback on individual assignments using Natural Language Processing (NLP) techniques including sentiment analysis, bigram splitting, and Named Entity Recognition (NER) to quantify post-, sentence-, and word-dependent attributes of grader writing. We demonstrate that student grade improvement can be well approximated by a multivariate linear model with average fits across course sections between 67% and 83%. We determine several statistically significant contributors to and detractors from student success contained in instructor feedback. For example, our results reveal that inclusion of student name is significantly correlated with an improvement in post-feedback grades, as is inclusion of specific assignment-related keywords. Finally, we discuss how this methodology can be incorporated into educational technology systems to make recommendations for feedback content from observed student behavior.
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