"Real Learner Data Matters" Exploring the Design of LLM-Powered Question Generation for Deaf and Hard of Hearing Learners
Deaf and Hard of Hearing (DHH) learners face unique challenges in learning environments, often due to a lack of tailored educational materials that address their specific needs. This study explores the potential of Large Language Models (LLMs) to generate personalized quiz questions to enhance DHH s...
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Zusammenfassung: | Deaf and Hard of Hearing (DHH) learners face unique challenges in learning
environments, often due to a lack of tailored educational materials that
address their specific needs. This study explores the potential of Large
Language Models (LLMs) to generate personalized quiz questions to enhance DHH
students' video-based learning experiences. We developed a prototype leveraging
LLMs to generate questions with emphasis on two unique strategies: Visual
Questions, which identify video segments where visual information might be
misrepresented, and Emotion Questions, which highlight moments where previous
DHH learners experienced learning difficulty manifested in emotional responses.
Through user studies with DHH undergraduates, we evaluated the effectiveness of
these LLM-generated questions in supporting the learning experience. Our
findings indicate that while LLMs offer significant potential for personalized
learning, challenges remain in the interaction accessibility for the diverse
DHH community. The study highlights the importance of considering language
diversity and culture in LLM-based educational technology design. |
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DOI: | 10.48550/arxiv.2410.00194 |