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NoTeeline: Supporting Real-Time, Personalized Notetaking with LLM-Enhanced Micronotes

24 September 2024
Faria Huq
Abdus Samee
David Chuan-en Lin
Xiaodi Alice Tang
Jeffrey P. Bigham
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Abstract

Taking notes quickly while effectively capturing key information can be challenging, especially when watching videos that present simultaneous visual and auditory streams. Manually taken notes often miss crucial details due to the fast-paced nature of the content, while automatically generated notes fail to incorporate user preferences and discourage active engagement with the content. To address this, we propose an interactive system, NoTeeline, for supporting real-time, personalized notetaking. Given 'micronotes', NoTeeline automatically expands them into full-fledged notes using Large Language Model (LLM). The generated notes build on the content of micronotes by adding relevant details while maintaining consistency with the user's writing style. In a within-subjects study (n=12), we found that NoTeeline creates high-quality notes that capture the essence of their micronotes with 93.2% factual correctness and accurately align with their writing style (8.33% improvement). Using NoTeeline, participants could capture their desired notes with significantly reduced mental effort, writing 47.0% less text and completing their note in 43.9% less time compared to a manual notetaking baseline. Our results suggest that NoTeeline enables users to integrate LLM assistance in a familiar notetaking workflow while ensuring consistency with their preference.

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