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Auteurs principaux: Wang, Jie, Wang, Yichen, Zhang, Zhilin, Zeng, Jianhao, Wang, Kaidi, Chen, Zhiyang
Format: Preprint
Publié: 2024
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Accès en ligne:https://arxiv.org/abs/2411.18162
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author Wang, Jie
Wang, Yichen
Zhang, Zhilin
Zeng, Jianhao
Wang, Kaidi
Chen, Zhiyang
author_facet Wang, Jie
Wang, Yichen
Zhang, Zhilin
Zeng, Jianhao
Wang, Kaidi
Chen, Zhiyang
contents With strong expressive capabilities in Large Language Models(LLMs), generative models effectively capture sentiment structures and deep semantics, however, challenges remain in fine-grained sentiment classification across multi-lingual and complex contexts. To address this, we propose the Sentiment Cross-Lingual Recognition and Logic Framework (SentiXRL), which incorporates two modules,an emotion retrieval enhancement module to improve sentiment classification accuracy in complex contexts through historical dialogue and logical reasoning,and a self-circulating analysis negotiation mechanism (SANM)to facilitates autonomous decision-making within a single model for classification tasks.We have validated SentiXRL's superiority on multiple standard datasets, outperforming existing models on CPED and CH-SIMS,and achieving overall better performance on MELD,Emorynlp and IEMOCAP. Notably, we unified labels across several fine-grained sentiment annotation datasets and conducted category confusion experiments, revealing challenges and impacts of class imbalance in standard datasets.
format Preprint
id arxiv_https___arxiv_org_abs_2411_18162
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle SentiXRL: An advanced large language Model Framework for Multilingual Fine-Grained Emotion Classification in Complex Text Environment
Wang, Jie
Wang, Yichen
Zhang, Zhilin
Zeng, Jianhao
Wang, Kaidi
Chen, Zhiyang
Computation and Language
With strong expressive capabilities in Large Language Models(LLMs), generative models effectively capture sentiment structures and deep semantics, however, challenges remain in fine-grained sentiment classification across multi-lingual and complex contexts. To address this, we propose the Sentiment Cross-Lingual Recognition and Logic Framework (SentiXRL), which incorporates two modules,an emotion retrieval enhancement module to improve sentiment classification accuracy in complex contexts through historical dialogue and logical reasoning,and a self-circulating analysis negotiation mechanism (SANM)to facilitates autonomous decision-making within a single model for classification tasks.We have validated SentiXRL's superiority on multiple standard datasets, outperforming existing models on CPED and CH-SIMS,and achieving overall better performance on MELD,Emorynlp and IEMOCAP. Notably, we unified labels across several fine-grained sentiment annotation datasets and conducted category confusion experiments, revealing challenges and impacts of class imbalance in standard datasets.
title SentiXRL: An advanced large language Model Framework for Multilingual Fine-Grained Emotion Classification in Complex Text Environment
topic Computation and Language
url https://arxiv.org/abs/2411.18162