Rule-Based Automatic Question Generation Using Semantic Role Labeling

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Authors

Tuğlular, Tuğkan
Tekir, Selma

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GOLD

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Yes

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0

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2

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Abstract

This paper proposes a new rule-based approach to automatic question generation. The proposed approach focuses on analysis of both syntactic and semantic structure of a sentence. Although the primary objective of the designed system is question generation from sentences, automatic evaluation results shows that, it also achieves great performance on reading comprehension datasets, which focus on question generation from paragraphs. Especially, with respect to METEOR metric, the designed system significantly outperforms all other systems in automatic evaluation. As for human evaluation, the designed system exhibits similar performance by generating the most natural (human-like) questions.

Description

Keywords

Question generation, Rule-based, Semantic role labeling, METEOR, Question generation, Rule-based, METEOR, Semantic role labeling

Fields of Science

0202 electrical engineering, electronic engineering, information engineering, 02 engineering and technology

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OpenCitations Citation Count
4

Volume

E102D

Issue

7

Start Page

1362

End Page

1373
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Citations

Scopus : 14

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Mendeley Readers : 36

SCOPUS™ Citations

14

checked on Apr 28, 2026

Web of Science™ Citations

9

checked on Apr 28, 2026

Page Views

1172

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Downloads

116

checked on Apr 28, 2026

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