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Automatic detection of inconsistencies between numerical scores and textual feedback in peer-assessment processes with machine learning

机译:通过机器学习自动检测对等评估过程中的数值分数和文本反馈之间的不一致

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摘要

The use of peer assessment for open-ended activities has advantages for both teachers and students. Teachers might reduce the workload of the correction process and students achieve a better understanding of the subject by evaluating the activities of their peers. In order to ease the process, it is advisable to provide the students with a rubric over which performing the assessment of their peers; however, restricting themselves to provide only numerical scores is detrimental, as it prevents providing valuable feedback to others peers. Since this assessment produces two modalities of the same evaluation, namely numerical score and textual feedback, it is possible to apply automatic techniques to detect inconsistencies in the evaluation, thus minimizing the teachers' workload for supervising the whole process. This paper proposes a machine learning approach for the detection of such inconsistencies. To this end, we consider two different approaches, each of which is tested with different algorithms, in order to both evaluate the approach itself and find appropriate models to make it successful. The experiments carried out with 4 groups of students and 2 types of activities show that the proposed approach is able to yield reliable results, thus representing a valuable approach for ensuring a fair operation of the peer assessment process.
机译:对开放式活动的同行评估使用具有教师和学生的优势。教师可能会降低更正过程的工作量,学生通过评估同行的活动来更好地了解该主题。为了简化此过程,建议向学生提供对同龄人进行评估的标题;然而,限制自己只提供数值分数是有害的,因为它阻止向他人提供有价值的反馈。由于该评估产生了相同评估的两个模式,即数值分数和文本反馈,可以应用自动化技术来检测评估中的不一致性,从而最大限度地减少教师的工作量来监督整个过程。本文提出了一种用于检测此类不一致的机器学习方法。为此,我们考虑两种不同的方法,每个方法都是用不同的算法测试,以便两者都评估方法本身并找到适当的模型来使其成功。用4组学生和2种活动进行的实验表明,该方法能够产生可靠的结果,从而代表确保同行评估过程的公平运作的有价值的方法。

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