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Mapping the Increasing Use of LLMs in Scientific Papers

Authors :
Liang, Weixin
Zhang, Yaohui
Wu, Zhengxuan
Lepp, Haley
Ji, Wenlong
Zhao, Xuandong
Cao, Hancheng
Liu, Sheng
He, Siyu
Huang, Zhi
Yang, Diyi
Potts, Christopher
Manning, Christopher D
Zou, James Y.
Publication Year :
2024

Abstract

Scientific publishing lays the foundation of science by disseminating research findings, fostering collaboration, encouraging reproducibility, and ensuring that scientific knowledge is accessible, verifiable, and built upon over time. Recently, there has been immense speculation about how many people are using large language models (LLMs) like ChatGPT in their academic writing, and to what extent this tool might have an effect on global scientific practices. However, we lack a precise measure of the proportion of academic writing substantially modified or produced by LLMs. To address this gap, we conduct the first systematic, large-scale analysis across 950,965 papers published between January 2020 and February 2024 on the arXiv, bioRxiv, and Nature portfolio journals, using a population-level statistical framework to measure the prevalence of LLM-modified content over time. Our statistical estimation operates on the corpus level and is more robust than inference on individual instances. Our findings reveal a steady increase in LLM usage, with the largest and fastest growth observed in Computer Science papers (up to 17.5%). In comparison, Mathematics papers and the Nature portfolio showed the least LLM modification (up to 6.3%). Moreover, at an aggregate level, our analysis reveals that higher levels of LLM-modification are associated with papers whose first authors post preprints more frequently, papers in more crowded research areas, and papers of shorter lengths. Our findings suggests that LLMs are being broadly used in scientific writings.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2404.01268
Document Type :
Working Paper