Review on Neural Question Generation for Education Purposes

Article Status
Published
Authors/contributors
Title
Review on Neural Question Generation for Education Purposes
Abstract
Questioning plays a vital role in education, directing knowledge construction and assessing students’ understanding. However, creating high-level questions requires significant creativity and effort. Automatic question generation is expected to facilitate the generation of not only fluent and relevant but also educationally valuable questions. While rule-based methods are intuitive for short inputs, they struggle with longer and more complex inputs. Neural question generation (NQG) has shown better results in this regard. This review summarizes the advancements in NQG between 2016 and early 2022. The focus is on the development of NQG for educational purposes, including challenges and research opportunities. We found that although NQG can generate fluent and relevant factoid-type questions, few studies focus on education. Specifically, there is limited literature using context in the form of multi-paragraphs, which due to the input limitation of the current deep learning techniques, require key content identification. The desirable key content should be important to specific topics or learning objectives and be able to generate certain types of questions. A further research opportunity is controllable NQG systems, which can be customized by taking into account factors like difficulty level, desired answer type, and other individualized needs. Equally important, the results of our review also suggest that it is necessary to create datasets specific to the question generation tasks with annotations that support better learning for neural-based methods.
Publication
International Journal of Artificial Intelligence in Education
Volume
34
Issue
3
Pages
1008-1045
Date
2023-10-31
Journal Abbr
Int. J. Artif. Intell. Educ.
Language
en
ISSN
1560-4292
Accessed
05/12/2023, 17:30
Library Catalogue
DOI.org (Crossref)
Extra
Citation Key: alfaraby2023 <标题>: 关于教育用途的神经问题生成的综述 <AI Smry>: It is found that although NQG can generate fluent and relevant factoid-type questions, few studies focus on education, and it is necessary to create datasets specific to the question generation tasks with annotations that support better learning for neural-based methods. Read_Status: New Read_Status_Date: 2025-11-10T07:26:19.115Z
Citation
Al Faraby, S., Adiwijaya, A., & Romadhony, A. (2023). Review on Neural Question Generation for Education Purposes. International Journal of Artificial Intelligence in Education, 34(3), 1008–1045. https://doi.org/10.1007/s40593-023-00374-x
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