A Vector Space Based Approach for Short Answer Grading System

Leila Ouahrani, Djamel Bennouar
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引用次数: 1

Abstract

Enhancing the quality of teaching and learning in education might be through designing, implementing, and making effective use of assessment practice. In this paper we address the task of computer assisted assessment of short student answers. We describe a new statistical approach used to design Short Answer Grading System adapted to Arabic language. The approach consists of building a semantic space that gives distributional representation of words based on word co-occurrences in text corpora. Semantic similarity is computed using the summation vector model. Score similarity is enhanced by an individual normalized term frequencies weighting and then combining the index of common words between the model and the student answers using syntactic DICE's coefficient. A great advantage of this statistical approach is that it does not require the existence of any word data models. It is particularly suitable in situations where no large, publicly available, linguistic resources can be found for a desired language. Evaluated on two datasets, the proposed approach yielded 81.49% correlation and 0.97 Root Mean Squared Error with human grading scores. The proposed approach gets significantly closer to some works in the literature and outperforms others. This shows that such an approach can be as effective as approaches using sophisticated similarities calculations that make the system difficult to achieve and to use in practice.
基于向量空间的简答评分系统方法
提高教育教与学的质量可以通过设计、实施和有效利用评估实践来实现。在本文中,我们解决了计算机辅助评估学生简短答案的任务。我们描述了一种新的统计方法,用于设计适合阿拉伯语的简答评分系统。该方法包括建立一个语义空间,该语义空间基于文本语料库中的词共现来给出词的分布表示。使用求和向量模型计算语义相似度。分数相似度通过单个归一化词频率加权来增强,然后使用句法DICE系数将模型和学生答案之间的常用词索引结合起来。这种统计方法的一大优点是,它不需要存在任何单词数据模型。它特别适用于无法找到所需语言的大量公开语言资源的情况。在两个数据集上进行评估,该方法与人类评分的相关性为81.49%,均方根误差为0.97。所提出的方法与文献中的一些作品非常接近,并且优于其他作品。这表明,这种方法可以与使用复杂相似度计算的方法一样有效,这使得系统难以实现和在实践中使用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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