Landscape of Large Language Models in Global English News: Topics, Sentiments, and Spatiotemporal Analysis
DOI:
https://doi.org/10.1609/icwsm.v18i1.31416Abstract
Generative AI has exhibited considerable potential to transform various industries and public life. The role of news media coverage of generative AI is pivotal in shaping public perceptions and judgments about this significant technological innovation. This paper provides in-depth analysis and rich insights into the temporal and spatial distribution of topics, sentiment, and substantive themes within global news coverage focusing on the latest emerging technology—generative AI. We collected a comprehensive dataset of English news articles (January 2018 to November 2023, N = 24,827) through ProQuest databases. For topic modeling, we employed the BERTopic technique and combined it with qualitative coding to identify semantic themes. Subsequently, sentiment analysis was conducted using the RoBERTa-base model. Analysis of temporal patterns in the data reveals notable variability in coverage across key topics—business, corporate technological development, regulation and security, and education—with spikes in articles coinciding with major AI developments and policy discussions. Sentiment analysis shows a predominantly neutral to positive media stance, with the business-related articles exhibiting more positive sentiment, while regulation and security articles receive a reserved, neutral to negative sentiment. Our study offers a valuable framework to investigate global news discourse and evaluate news attitudes and themes related to emerging technologies.Downloads
Published
2024-05-28
How to Cite
Xian, L., Li, L., Xu, Y., Zhang, B. Z., & Hemphill, L. (2024). Landscape of Large Language Models in Global English News: Topics, Sentiments, and Spatiotemporal Analysis. Proceedings of the International AAAI Conference on Web and Social Media, 18(1), 1661-1673. https://doi.org/10.1609/icwsm.v18i1.31416
Issue
Section
Full Papers