Peer Assessment Based on the User Preference Matrix

Zhisen Fan, Meixiu Lu, Xia Li
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引用次数: 1

Abstract

Peer assessment not only provides a solution to inefficient teacher-student interaction between the students and teachers at universities, but can effectively improve the students’ learning efficiency. However, students are seldom engaged in peer assessment tasks and the scores they get from peer assessment differ from those given by the teachers. An automatic ranking method for English essays based on the user preference matrix and the stochastic gradient descent method was proposed in this study. Experiments showed that this new method could improve the performance of the stochastic gradient descent method when the credibility of the student’s evaluation was considered. Teachers can obtain the rankings of students’ essays by analyzing a few peer-assessment scores obtained by this method and optimize their teaching strategies accordingly.
基于用户偏好矩阵的同行评价
同伴评价不仅解决了高校师生互动效率低下的问题,而且可以有效提高学生的学习效率。然而,学生很少参与到同伴评估任务中,他们从同伴评估中得到的分数与老师给的分数不一致。提出了一种基于用户偏好矩阵和随机梯度下降法的英语作文自动排序方法。实验表明,在考虑学生评价可信度的情况下,该方法可以提高随机梯度下降法的性能。教师可以通过分析该方法得到的少量同行评议分数,得出学生作文的排名,并据此优化教学策略。
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