EmoMeta: A Multimodal Dataset for Fine-grained Emotion Classification in Chinese Metaphors
EmoMeta: A Multimodal Dataset for Fine-grained Emotion Classification in Chinese Metaphors
Metaphors play a pivotal role in expressing emotions, making them crucial for emotional intelligence. The advent of multimodal data and widespread communication has led to a proliferation of multimodal metaphors, amplifying the complexity of emotion classification compared to single-mode scenarios. However, the scarcity of research on constructing multimodal metaphorical fine-grained emotion datasets hampers progress in this domain. Moreover, existing studies predominantly focus on English, overlooking potential variations in emotional nuances across languages. To address these gaps, we introduce a multimodal dataset in Chinese comprising 5,000 text-image pairs of metaphorical advertisements. Each entry is meticulously annotated for metaphor occurrence, domain relations and fine-grained emotion classification encompassing joy, love, trust, fear, sadness, disgust, anger, surprise, anticipation, and neutral. Our dataset is publicly accessible (https://github.com/DUTIR-YSQ/EmoMeta), facilitating further advancements in this burgeoning field.
Xingyuan Lu、Yuxi Liu、Dongyu Zhang、Zhiyao Wu、Jing Ren、Feng Xia
语言学汉语
Xingyuan Lu,Yuxi Liu,Dongyu Zhang,Zhiyao Wu,Jing Ren,Feng Xia.EmoMeta: A Multimodal Dataset for Fine-grained Emotion Classification in Chinese Metaphors[EB/OL].(2025-05-12)[2025-07-01].https://arxiv.org/abs/2505.13483.点此复制
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