Qgen: A Unique Question Generation and Answer Evaluation Technique Using Natural Language Processing

Sumedh Vichare, Aruna Gawade, Ramchandra Mangrulkar
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引用次数: 0

Abstract

Abstract: Educational infrastructure is moving towards rapid digitization to conduct and evaluate examinations for remote students. Many universities now offer globally recognized distance learning courses to cater to a wider audience. However, this transition comes with its set of challenges, particularly for professors and staff members who find themselves burdened with a substantial amount of manual work during the examination season. The tasks include setting up unique question papers for every exam, including different types of questions with varying difficulty, and eventually evaluating the answers given by the students, which is not only timeconsuming but also a labour-intensive process. To address this issue, the paper proposes a solution that aims to reduce the workload of teaching staff by enhancing the efficiency of the examination process. It does so by leveraging several natural language processing techniques for generating two types of questions- objective and subjective, and grading the solutions of the examinee. Additionally, subjective questions are further classified based on Bloom's taxonomy levels, providing a diverse range of questions that align with varying cognitive abilities. The automation of this process not only eases the burden on educators but also ensures a more streamlined and effective examination process, thus contributing to the broader goal of digitizing education. Keywords: Automated Question Generation, Bloom's Taxonomy, Workload Reduction.
Qgen:利用自然语言处理的独特问题生成和答案评估技术
摘要:教育基础设施正朝着快速数字化的方向发展,以便为远程学生举办和评估考试。现在,许多大学都开设了全球认可的远程学习课程,以满足更多学生的需求。然而,这种转变也带来了一系列挑战,特别是对于教授和工作人员来说,他们发现自己在考试季节要承担大量的手工工作。这些工作包括为每次考试编制独特的试卷,包括不同类型、不同难度的试题,以及最终评估学生给出的答案,这不仅耗费时间,也是一个劳动密集型过程。针对这一问题,本文提出了一种解决方案,旨在通过提高考试过程的效率来减轻教学人员的工作量。该方案利用多种自然语言处理技术生成客观和主观两类问题,并对考生的解答进行评分。此外,主观题会根据布鲁姆分类法的等级进一步分类,提供符合不同认知能力的各种问题。这一过程的自动化不仅减轻了教育工作者的负担,还确保了考试过程更加简化和有效,从而有助于实现教育数字化的更广泛目标。关键词自动生成试题 布卢姆分类法 减少工作量
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来源期刊
CiteScore
1.20
自引率
0.00%
发文量
122
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