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Fake news research trends, linkages to generative artificial intelligence and sustainable development goals.


ABSTRACT: In the digital age, where information is a cornerstone for decision-making, social media's not-so-regulated environment has intensified the prevalence of fake news, with significant implications for both individuals and societies. This study employs a bibliometric analysis of a large corpus of 9678 publications spanning 2013-2022 to scrutinize the evolution of fake news research, identifying leading authors, institutions, and nations. Three thematic clusters emerge: Disinformation in social media, COVID-19-induced infodemics, and techno-scientific advancements in auto-detection. This work introduces three novel contributions: 1) a pioneering mapping of fake news research to Sustainable Development Goals (SDGs), indicating its influence on areas like health (SDG 3), peace (SDG 16), and industry (SDG 9); 2) the utilization of Prominence percentile metrics to discern critical and economically prioritized research areas, such as misinformation and object detection in deep learning; and 3) an evaluation of generative AI's role in the propagation and realism of fake news, raising pressing ethical concerns. These contributions collectively provide a comprehensive overview of the current state and future trajectories of fake news research, offering valuable insights for academia, policymakers, and industry.

SUBMITTER: Raman R 

PROVIDER: S-EPMC10844021 | biostudies-literature | 2024 Feb

REPOSITORIES: biostudies-literature

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Fake news research trends, linkages to generative artificial intelligence and sustainable development goals.

Raman Raghu R   Kumar Nair Vinith V   Nedungadi Prema P   Kumar Sahu Aditya A   Kowalski Robin R   Ramanathan Sasangan S   Achuthan Krishnashree K  

Heliyon 20240124 3


In the digital age, where information is a cornerstone for decision-making, social media's not-so-regulated environment has intensified the prevalence of fake news, with significant implications for both individuals and societies. This study employs a bibliometric analysis of a large corpus of 9678 publications spanning 2013-2022 to scrutinize the evolution of fake news research, identifying leading authors, institutions, and nations. Three thematic clusters emerge: Disinformation in social medi  ...[more]

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