LLM-guided Semi-Supervised Approaches for Social Media Crisis Data Classification · DeepSignal
LLM-guided Semi-Supervised Approaches for Social Media Crisis Data Classification arXiv cs.AI · Jacob Ativo, Bharaneeshwar Balasubramaniyam, Anh Tran, Khushboo Gupta, Hongmin Li, Doina Caragea, Cornelia Caragea 4d ago · ~1 min· 5/13/2026· en· 2This study evaluates LLM-guided semi-supervised learning for classifying crisis-related tweets, outperforming traditional methods.
Key Points LG-CoTrain significantly outperforms classical methods in low-resource settings. VerifyMatch shows competitive performance with strong calibration properties. Compact models can outperform large LLMs in zero-shot scenarios. Reader Mode is being prepared.
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Why Featured
This research highlights the potential of LLM-guided semi-supervised learning to enhance crisis data classification, signaling a shift towards more efficient AI applications in real-time social media analysis.