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Noise Reduction in Essay Datasets for Automated Essay Grading

机译:杂文数据集中的降噪以实现自动杂文分级

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Marking of a huge number of essays is a very burdensome and tedious task for the teacher and/or trainer. Studies have shown that their efficiency decreases significantly when continuously marking essays over a given period of time. An Automated Essay Grading (AEG) system would be most desirable in such a scenario to reduce the workload of the teacher and/or trainer and to increase the efficiency of the marking process. Almost all the existing AEG systems assume that the relationship between the features of the essay and the essay grade is linear, which may not necessarily be the case. In cases where the relationship between the feature vector and the essay grade is non-linear, none of the existing methods provides a mechanism to capture that and determine an accurate essay grade. This paper proposes a new AEG system, the OzEgrader, that aims to capture both the linear and non-linear relationships between the essay features and its grade, and explains the methodology for noise reduction in the essay dataset.
机译:对于老师和/或培训师而言,标记大量论文是一项非常繁琐且繁琐的任务。研究表明,在给定时间内连续标记论文时,其效率会大大降低。在这种情况下,最希望使用自动作文评分(AEG)系统,以减少教师和/或培训师的工作量并提高评分过程的效率。几乎所有现有的AEG系统都假设论文的特征与论文等级之间的关系是线性的,而事实并非一定如此。如果特征向量与论文等级之间的关系是非线性的,则现有方法均无法提供一种机制来捕获该信息并确定准确的论文等级。本文提出了一种新的AEG系统OzEgrader,其目的是捕获论文特征及其等级之间的线性和非线性关系,并说明论文数据集中的降噪方法。

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