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arXiv 提交日期: 2026-02-17
📄 Abstract - Beyond Binary Classification: Detecting Fine-Grained Sexism in Social Media Videos

Online sexism appears in various forms, which makes its detection challenging. Although automated tools can enhance the identification of sexist content, they are often restricted to binary classification. Consequently, more subtle manifestations of sexism may remain undetected due to the lack of fine-grained, context-sensitive labels. To address this issue, we make the following contributions: (1) we present FineMuSe, a new multimodal sexism detection dataset in Spanish that includes both binary and fine-grained annotations; (2) we introduce a comprehensive hierarchical taxonomy that encompasses forms of sexism, non-sexism, and rhetorical devices of irony and humor; and (3) we evaluate a wide range of LLMs for both binary and fine-grained sexism detection. Our findings indicate that multimodal LLMs perform competitively with human annotators in identifying nuanced forms of sexism; however, they struggle to capture co-occurring sexist types when these are conveyed through visual cues.

顶级标签: natural language processing multi-modal model evaluation
详细标签: sexism detection multimodal dataset fine-grained classification social media analysis llm evaluation 或 搜索:

超越二元分类:检测社交媒体视频中的细粒度性别歧视 / Beyond Binary Classification: Detecting Fine-Grained Sexism in Social Media Videos


1️⃣ 一句话总结

这篇论文通过构建一个包含细粒度标注的西班牙语多模态数据集,并评估多种大语言模型,发现多模态模型能有效识别复杂的性别歧视内容,但在处理视觉信息中的多重歧视类型时仍有困难。

源自 arXiv: 2602.15757