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BERT-based distractor generation for Swedish reading comprehension questions using a small-scale dataset

2021-08-09 12:15:47
Dmytro Kalpakchi, Johan Boye

Abstract

An important part when constructing multiple-choice questions (MCQs) for reading comprehension assessment are the distractors, the incorrect but preferably plausible answer options. In this paper, we present a new BERT-based method for automatically generating distractors using only a small-scale dataset. We also release a new such dataset of Swedish MCQs (used for training the model), and propose a methodology for assessing the generated distractors. Evaluation shows that from a student's perspective, our method generated one or more plausible distractors for more than 50% of the MCQs in our test set. From a teacher's perspective, about 50% of the generated distractors were deemed appropriate. We also do a thorough analysis of the results.

Abstract (translated)

URL

https://arxiv.org/abs/2108.03973

PDF

https://arxiv.org/pdf/2108.03973.pdf


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