Bloom's Taxonomy-Based Approach for Assisting Formulation and Automatic Short Answer Grading

A. H. Filho, Eliane Kormann Tomazoni, Rosana Paza, ro Perego, A. Raabe
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引用次数: 3

Abstract

This paper presents an approach to enhance automatic short answer grading accuracy by using Bloom’s Taxonomy as a reference for questions formulation. We sought to address the semantic aspects related to the answer by using WordNet and Latent Semantic Analysis models, which supported automatic short answer grading with size ranging from a single sentence to a short paragraph. The responses for three questions answered by high school students were graded automatically resulting in a high correlation with teacher grading (0.82, 0.91, 0.80). Another discovery is that automatic correction might vary according to the type of question, the application context and that the representativeness and concision of the expected response.
Bloom基于分类法的辅助提法和自动答题评分方法
本文提出了一种利用Bloom分类法作为问题制定参考来提高自动简答评分精度的方法。我们试图通过使用WordNet和潜在语义分析模型来解决与答案相关的语义问题,这些模型支持从单句到短段不等的自动简短答案分级。高中学生回答的三个问题的答案自动评分,与教师评分有很高的相关性(0.82,0.91,0.80)。另一个发现是,自动纠正可能会根据问题的类型、应用上下文以及预期回答的代表性和简洁性而有所不同。
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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