MemeScouts@LT-EDI 2026: Asking the Right Questions -- Prompted Weak Supervision for Meme Hate Speech Detection
arXiv cs.CL / 4/28/2026
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Key Points
- Meme hate-speech detection is difficult because memes are multimodal and rely on subtle, culturally specific signals like sarcasm, context, and irony, which become even harder in multilingual settings.
- The paper introduces prompted weak supervision (PWS), which decomposes meme understanding into targeted question-based labeling functions with constrained answers for homophobia and transphobia.
- It uses a quantized Qwen3-VLM to answer targeted questions and extract features, and shows that this approach outperforms direct end-to-end VLM classification.
- The method achieves top rankings in the LT-EDI 2026 shared task: 1st in English, 2nd in Chinese, and 3rd in Hindi, with particularly strong gains for Chinese and Hindi.
- An iterative process that expands labeling functions based on errors and prunes features reduces redundancy and improves generalization, supporting the value of PWS for multilingual multimodal hate-speech detection.
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