Qlarify: Recursively Expandable Abstracts for Dynamic Information Retrieval over Scientific Papers

要旨

Navigating the vast scientific literature often starts with browsing a paper’s abstract. However, when a reader seeks additional information, not present in the abstract, they face a costly cognitive chasm during their dive into the full text. To bridge this gap, we introduce recursively expandable abstracts, a novel interaction paradigm that dynamically expands abstracts by progressively incorporating additional information from the papers’ full text. This lightweight interaction allows scholars to specify their information needs by quickly brushing over the abstract or selecting AI-suggested expandable entities. Relevant information is synthesized using a retrieval-augmented generation approach, presented as a fluid, threaded expansion of the abstract, and made efficiently verifiable via attribution to relevant source-passages in the paper. Through a series of user studies, we demonstrate the utility of recursively expandable abstracts and identify future opportunities to support low-effort and just-in-time exploration of long-form information contexts through LLM-powered interactions.

著者
Raymond Fok
University of Washington, Seattle, Washington, United States
Joseph Chee Chang
Allen Institute for AI, Seattle, Washington, United States
Tal August
Allen Institute for AI, Seattle, Washington, United States
Amy X.. Zhang
University of Washington, Seattle, Washington, United States
Daniel S. Weld
Allen Institute for Artificial Intelligence, Seattle, Washington, United States
論文URL

https://doi.org/10.1145/3654777.3676397

動画

会議: UIST 2024

ACM Symposium on User Interface Software and Technology

セッション: 3. Learning to Learn

Westin: Allegheny 3
4 件の発表
2024-10-17 00:35:00
2024-10-17 01:35:00