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Feature Engineering and Ensemble-Based Approach for Improving Automatic Short-Answer Grading Performance

机译:基于工程和合奏的改进自动答案分级性能的方法

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摘要

In this paper, we studied different automatic short answer grading (ASAG) systems to provide a comprehensive view of the feature spaces explored by previous works. While the performance reported in previous works have been encouraging, systematic study of the features is lacking. Apart from providing systematic feature space exploration, we also presented ensemble methods that have been experimentally validated to exhibit significantly higher grading performance over the existing papers in almost all the datasets in ASAG domain. A comparative study over different features and regression models toward short-answer grading has been performed with respect to evaluation metrics used in evaluating ASAG. Apart from traditional text similarity based features like WordNet similarity, latent semantic analysis, and others, we have introduced novel features like topic models suited for short text, relevance feedback based features. An ensemble-based model has been built using a combination of different regression models with an approach based on stacked regression. The proposed ASAG has been tested on the University of North Texas dataset for the regression task, whereas in case of classification task, the student response analysis (SRA) based ScientsBank and Beetle corpus have been used for evaluation. The grading performance in case of ensemble-based ASAG is highly boosted from that exhibited by an individual regression model. Extensive experimentation has revealed that feature selection, introduction of novel features, and regressor stacking have been instrumental in achieving considerable improvement in performance over the existing methods in ASAG domain.
机译:在本文中,我们研究了不同的自动简短答题分级(ASAG)系统,以提供以前的作品所探索的特征空间的全面视图。虽然以前作品中报告的表现令人鼓舞,但缺乏对特征的系统研究。除了提供系统的特征空间探索之外,我们还提出了已经通过实验验证的集成方法,以在ASAG域中的几乎所有数据集中的现有文件中表现出显着更高的分级性能。关于评估ASAG中使用的评估度量,已经对不同特征和回归模型进行了比较研究。除了传统的文本相似性,与Wordnet相似性,潜在语义分析等的特点,我们已经推出了适合短文本的主题模型,基于反馈的功能的新功能。已经使用基于不同的回归模型的组合构建了基于集合的模型,其基于堆叠回归的方法。拟议的Asag已经在北德克萨斯大学数据集进行了回归任务,而在分类任务的情况下,基于学生的响应分析(SRA)的瘢痕和甲虫语料库已经用于评估。基于集合的ASAG的分级性能高度升高,从单个回归模型展示。广泛的实验透露,特征选择,新颖特征引入和回归堆叠已经有助于实现对ASAG域中现有方法的表现相当大的性能。

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