Environmental Studies and ForestryCommunications Earth & Environment
Hierarchical machine learning models can identify stimuli of climate change misinformation on social media
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Explore the intriguing world of climate change misinformation with groundbreaking research by Cristian Rojas, Frank Algra-Maschio, Mark Andrejevic, Travis Coan, John Cook, and Yuan-Fang Li. Unveiling a two-step hierarchical model, this study dives into five million tweets, unveiling how political and natural events trigger contrarian claims. Join us in understanding the dynamics of online climate discourse!
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