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Keywords: F1000 prime
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Journal Articles
Comment-enriched index terms improve the relevance and novelty of the ranking of the commented medical articles retrieved by an NLP system
Available to Purchase
Journal:
Online Information Review
Online Information Review (2023) 47 (6): 1155–1167.
Published: 29 December 2022
...-experimental pre-test and post-test research was designed to compare NLP-based indexes before and after being expanded by the comment terms. The experiments were conducted on a test collection of 13,957 documents commented by F1000-Prime reviewers. They were indexed at title, abstract, body and full-text...
