A Novel Framework for the Generation of Multiple Choice Question Stems Using Semantic and Machine-Learning Techniques

Author:

Kumar Archana PraveenORCID,Nayak AshalathaORCID,K Manjula ShenoyORCID,Chaitanya ,Ghosh Kaustav

Abstract

Abstract Multiple Choice Questions (MCQs) are a popular assessment method because they enable automated evaluation, flexible administration and use with huge groups. Despite these benefits, the manual construction of MCQs is challenging, time-consuming and error-prone. This is because each MCQ is comprised of a question called the "stem", a correct option called the "key" along with alternative options called "distractors" whose construction demands expertise from the MCQ developers. In addition, there are different kinds of MCQs such as Wh-type, Fill-in-the-blank, Odd one out, and many more needed to assess understanding at different cognitive levels. Automatic Question Generation (AQG) for developing heterogeneous MCQ stems has generally followed two approaches: semantics-based and machine-learning-based. Questions generated via AQG techniques can be utilized only if they are grammatically correct. Semantics-based techniques have been able to generate a range of different types of grammatically correct MCQs but require the semantics to be specified. In contrast, most machine-learning approaches have been primarily able to generate only grammatically correct Fill-in-the-blank/Cloze by reusing the original text. This paper describes a technique for combining semantic-based and machine-learning-based techniques to generate grammatically correct MCQ stems of various types for a technical domain. Expert evaluation of the resultant MCQ stems demonstrated that they were promising in terms of their usefulness and grammatical correctness.

Funder

Manipal Academy of Higher Education, Manipal

Publisher

Springer Science and Business Media LLC

Subject

Computational Theory and Mathematics,Education

Reference63 articles.

1. Agarwal, M., & Mannem, P. (2011). Automatic gap-fill question generation from text books. In Proceedings of the sixth workshop on innovative use of NLP for building educational applications, pages 56–64.

2. Agarwal, M. (2012). Cloze and open cloze question generation systems and their evaluation guidelines. International Institute of Information Technology, Hyderabad.

3. Aldabe, I., Maritxalar, M., & Mitkov, R. (2009). A study on the automatic selection of candidate sentences distractors. In AIED, pages 656–658.

4. Alsubait, T., Parsia, B., & Sattler, U. (2012). Mining ontologies for analogy questions: A similarity-based approach. In OWLED, volume 849.

5. Alsubait, T. (2015). Ontology-based question generation. PhD thesis, University of Manchester.

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