Back to Search Start Over

TOPICAL: TOPIC Pages AutomagicaLly

Authors :
Giorgi, John
Singh, Amanpreet
Downey, Doug
Feldman, Sergey
Wang, Lucy Lu
Publication Year :
2024

Abstract

Topic pages aggregate useful information about an entity or concept into a single succinct and accessible article. Automated creation of topic pages would enable their rapid curation as information resources, providing an alternative to traditional web search. While most prior work has focused on generating topic pages about biographical entities, in this work, we develop a completely automated process to generate high-quality topic pages for scientific entities, with a focus on biomedical concepts. We release TOPICAL, a web app and associated open-source code, comprising a model pipeline combining retrieval, clustering, and prompting, that makes it easy for anyone to generate topic pages for a wide variety of biomedical entities on demand. In a human evaluation of 150 diverse topic pages generated using TOPICAL, we find that the vast majority were considered relevant, accurate, and coherent, with correct supporting citations. We make all code publicly available and host a free-to-use web app at: https://s2-topical.apps.allenai.org<br />Comment: 10 pages, 7 figures, 2 tables, NAACL System Demonstrations 2024

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2405.01796
Document Type :
Working Paper