cs.AI updates on arXiv.org 10月23日 12:22
LLM情感识别:优化方法及效果评估
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本文探讨了在大型语言模型(LLMs)中实现情感识别的挑战和优化方法。通过比较微调和提示工程的效果,实验结果表明了结构化提示和情感分组对LLMs性能的积极影响。

arXiv:2510.19668v1 Announce Type: cross Abstract: Transformer models have significantly advanced the field of emotion recognition. However, there are still open challenges when exploring open-ended queries for Large Language Models (LLMs). Although current models offer good results, automatic emotion analysis in open texts presents significant challenges, such as contextual ambiguity, linguistic variability, and difficulty interpreting complex emotional expressions. These limitations make the direct application of generalist models difficult. Accordingly, this work compares the effectiveness of fine-tuning and prompt engineering in emotion detection in three distinct scenarios: (i) performance of fine-tuned pre-trained models and general-purpose LLMs using simple prompts; (ii) effectiveness of different emotion prompt designs with LLMs; and (iii) impact of emotion grouping techniques on these models. Experimental tests attain metrics above 70% with a fine-tuned pre-trained model for emotion recognition. Moreover, the findings highlight that LLMs require structured prompt engineering and emotion grouping to enhance their performance. These advancements improve sentiment analysis, human-computer interaction, and understanding of user behavior across various domains.

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情感识别 大型语言模型 提示工程 微调 性能优化
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