Beckybams / Climate-Sentiment-Analysis-from-Social-MediaLinks
Climate-Sentiment-Analysis-from-Social-Media uses AI and NLP techniques to assess public opinions on climate issues by analyzing posts, comments, and trends across platforms. It identifies sentiment patterns, detects emerging concerns, and provides insights for policymakers, researcher
☆46Updated 2 weeks ago
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