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Using machine learning to classify reviewer comments in research article drafts to enable students to focus on global revision

机译:使用机器学习对研究文章草稿中的评论者评论进行分类,以使学生能够专注于全球修订

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Reviewer comments in research articles such as journal papers or dissertations guide students during the revision process to improve the quality of their articles. Our goal is to make the comments more meaningful to the students’ revision process. Revision involves implicit cognitive processes and ICT has the potential to make such processes explicit. Previous research into the cognitive processes involved in revision has shown that novices focus on local, sentence level revision while expert writers focus on global revision of ideas or restructuring of arguments. For better quality writing, students should focus more on global revision. The reviewer comments can either trigger more meaningful global revision ( content-related comments) or local revision ( non content-related comments). In this paper, a machine learning algorithm was applied to classify the comments in academic drafts in our laboratory as either content-related or not. Reviewer comments in academic article drafts are usually short. Therefore, this research applied a Support Vector Machine (SVM) algorithm for the classification, which is one of the most common machine learning algorithms for short texts. Performance evaluation was based on the measures of accuracy, precision and recall for the non content-related comments. Using cross validation, highest scores of 86%, 89% and 89% were achieved for accuracy, recall, and precision, respectively. The results demonstrate the success of the automatic classification, which can be applied to filter out non content-related comments so that the students focus first on revising the content-related comments. In this way, the students can increase their awareness of the importance of global revision.
机译:研究文章(例如期刊论文或论文)中的审阅者评论会在修订过程中指导学生提高文章质量。我们的目标是使评论对学生的修订过程更有意义。修订涉及隐含的认知过程,而ICT有潜力使这些过程变得明确。先前对涉及修订的认知过程的研究表明,新手侧重于本地,句子级别的修订,而专家作家则侧重于思想的整体修订或论证的重构。为了获得更好的写作质量,学生应该更多地关注全球修订。审阅者的评论可以触发更有意义的全局修订(与内容相关的评论)或本地修订(与内容无关的评论)。在本文中,我们采用了一种机器学习算法将我们实验室的学术论文中的评论归类为内容无关或无关。学术论文草稿中的审稿人评论通常很短。因此,本研究采用支持向量机(SVM)算法进行分类,这是短文本中最常用的机器学习算法之一。绩效评估基于对与内容无关的评论的准确性,准确性和召回率的度量。使用交叉验证,准确性,召回率和准确性分别达到86%,89%和89%的最高分。结果证明了自动分类的成功,该分类可用于过滤掉与内容无关的注释,从而使学生首先专注于修订与内容相关的注释。这样,学生可以提高对全球修订重要性的认识。

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