Will AI speed up literature reviews or derail them entirely?
Sam A. Reynolds (),
Alec P. Christie,
Lynn V. Dicks,
Sadiq Jaffer,
Anil Madhavapeddy,
Rebecca K. Smith and
William J. Sutherland
Nature, 2025, vol. 643, issue 8071, 329-331
Abstract:
The publication of ever-larger numbers of problematic papers, including fake ones generated by artificial intelligence, represents an existential crisis for the established way of doing evidence synthesis. But with a new approach, AI might also save the day.
Keywords: Machine learning; Research data; Biodiversity; Medical research (search for similar items in EconPapers)
Date: 2025
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DOI: 10.1038/d41586-025-02069-w
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