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Towards Low-Resource Harmful Meme Detection with LMM Agents

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The proliferation of Internet memes in the age of social media necessitates effective identification of harmful ones. Due to the dynamic nature of memes, existing data-driven models may struggle in low-resource scenarios where only a few labeled examples are available. In this paper, we propose an agency-driven framework for low-resource harmful meme detection, employing both outward and inward analysis with few-shot annotated samples. Inspired by the powerful capacity of Large Multimodal Models (LMMs) on multimodal reasoning, we first retrieve relative memes with annotations to leverage label information as auxiliary signals for the LMM agent. Then, we elicit knowledge-revising behavior within the LMM agent to derive well-generalized insights into meme harmfulness. By combining these strategies, our approach enables dialectical reasoning over intricate and implicit harm-indicative patterns. Extensive experiments conducted on three meme datasets demonstrate that our proposed approach achieves superior performance than state-of-the-art methods on the low-resource harmful meme detection task.

Jianzhao Huang, Hongzhan Lin, Ziyan Liu, Ziyang Luo, Guang Chen, Jing Ma• 2024

Related benchmarks

TaskDatasetResultRank
Meme ClassificationHatefulMemes--
43
Meme ClassificationMAMI
Accuracy0.754
30
Meme ClassificationHarMeme
Accuracy73.7
30
Harmful Meme DetectionFHM
Accuracy70.2
29
Harmful Meme DetectionMAMI
Accuracy83
19
ClassificationMAMI
Accuracy83
16
Harmful Meme DetectionToxiCN
Accuracy75.29
16
ClassificationFHM
Accuracy70.2
16
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