cs.AI updates on arXiv.org 10月09日 12:03
细粒度情感识别:原型理论与EICL方法
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本文探讨细粒度情感识别中的决策过程,提出Emotion In-Context Learning(EICL)方法,通过引入情感相似示例和动态软标签策略优化情感推理过程中的查询表示,并在多个数据集上显著优于In-Context Learning(ICL)。

arXiv:2510.06600v1 Announce Type: new Abstract: Fine-grained emotion recognition aims to identify the emotional type in queries through reasoning and decision-making processes, playing a crucial role in various systems. Recent methods use In-Context Learning (ICL), enhancing the representation of queries in the reasoning process through semantically similar examples, while further improving emotion recognition by explaining the reasoning mechanisms. However, these methods enhance the reasoning process but overlook the decision-making process. This paper investigates decision-making in fine-grained emotion recognition through prototype theory. We show that ICL relies on similarity matching between query representations and emotional prototypes within the model, where emotion-accurate representations are critical. However, semantically similar examples often introduce emotional discrepancies, hindering accurate representations and causing errors. To address this, we propose Emotion In-Context Learning (EICL), which introduces emotionally similar examples and uses a dynamic soft-label strategy to improve query representations in the emotion reasoning process. A two-stage exclusion strategy is then employed to assess similarity from multiple angles, further optimizing the decision-making process. Extensive experiments show that EICL significantly outperforms ICL on multiple datasets.

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细粒度情感识别 原型理论 EICL方法 情感推理 决策过程
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