CHASM is a new benchmark dataset showing that existing multimodal large language models fail to reliably detect covert advertisements on Chinese social media even after fine-tuning.
arXiv preprint arXiv:2403.11169 , year=
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CHASM: Unveiling Covert Advertisements on Chinese Social Media
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