Evaluation of Automated Vocabulary Quiz Generation with VocQGen

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Dades bibliogràfiques
Publicat a:Vocabulary Learning and Instruction vol. 14, no. 1 (2025)
Autor principal: Wang, Qiao
Altres autors: Rose, Ralph L, Sugawara, Ayaka, Orita, Naho
Publicat:
Castledown Publishers
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Accés en línia:Citation/Abstract
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Resum:VocQGen is an automated tool designed to generate multiple-choice cloze (MCC) questions for vocabulary assessment in second language learning contexts. It leverages several natural language processing (NLP) tools and OpenAI's GPT-4 model to produce MCC items quickly from user-specified word lists. To evaluate its effectiveness, we used the first sublist in the Academic Word List (AWL) to generate 60 questions with VocQGen. Then we compared the quality of 60 autogenerated questions with 40 manually created ones through expert reviews and through pilot testing with 68 students. Expert review results indicate that automatically generated questions exhibit higher grammatical accuracy and clearer contexts in question stems. However, the tool occasionally produces distractors that are acceptable as correct responses. Pilot testing results show that in general the number of correct responses is higher in autogenerated questions, indicating the less challenging nature of these questions. The study concludes that manual check is still required for questions generated by VocQGen and future work should focus on improving distractor effectiveness.
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