IEEE Access (Jan 2023)

DIRECT: Toward Dialogue-Based Reading Comprehension Tutoring

  • Jin-Xia Huang,
  • Yohan Lee,
  • Oh-Woog Kwon

DOI
https://doi.org/10.1109/ACCESS.2022.3233224
Journal volume & issue
Vol. 11
pp. 8978 – 8987

Abstract

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A major challenge in education is to provide students with a personalized learning experience. This study aims to address this by developing a dialogue-based intelligent tutoring system (ITS) that imitates human expert tutors. The ITS asks questions, assesses student answers, provides hints, and even chats to encourage student engagement. We constructed the Dialogue-based Reading Comprehension Tutoring (DIRECT) dataset to simulate real-world pedagogical scenarios with the assessment labels and key sentences to support tutoring. The DIRECT dataset is based on RACE, which is a large-scale English reading comprehension dataset. In addition, we propose a neural pipeline approach to model the tutoring tasks and conduct a comprehensive analysis on the results, including a human evaluation. The results show that our model performs well in generating questions, assessing answers, and chatting, showing high potential although some challenges remain. The proposed model provides a good basis for further development of dialogue-based ITSs.

Keywords