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arXiv 提交日期: 2026-02-09
📄 Abstract - ViGoEmotions: A Benchmark Dataset For Fine-grained Emotion Detection on Vietnamese Texts

Emotion classification plays a significant role in emotion prediction and harmful content detection. Recent advancements in NLP, particularly through large language models (LLMs), have greatly improved outcomes in this field. This study introduces ViGoEmotions -- a Vietnamese emotion corpus comprising 20,664 social media comments in which each comment is classified into 27 fine-grained distinct emotions. To evaluate the quality of the dataset and its impact on emotion classification, eight pre-trained Transformer-based models were evaluated under three preprocessing strategies: preserving original emojis with rule-based normalization, converting emojis into textual descriptions, and applying ViSoLex, a model-based lexical normalization system. Results show that converting emojis into text often improves the performance of several BERT-based baselines, while preserving emojis yields the best results for ViSoBERT and CafeBERT. In contrast, removing emojis generally leads to lower performance. ViSoBERT achieved the highest Macro F1-score of 61.50% and Weighted F1-score of 63.26%. Strong performance was also observed from CafeBERT and PhoBERT. These findings highlight that while the proposed corpus can support diverse architectures effectively, preprocessing strategies and annotation quality remain key factors influencing downstream performance.

顶级标签: natural language processing llm data
详细标签: emotion detection vietnamese nlp benchmark dataset text preprocessing transformer models 或 搜索:

ViGoEmotions:一个用于越南语文本细粒度情感检测的基准数据集 / ViGoEmotions: A Benchmark Dataset For Fine-grained Emotion Detection on Vietnamese Texts


1️⃣ 一句话总结

本研究构建并发布了首个包含27种细粒度情感的越南语社交媒体评论数据集ViGoEmotions,并通过实验发现,将表情符号转换为文本描述通常能提升多数BERT模型的分类性能,而ViSoBERT模型在该数据集上取得了最佳效果。

源自 arXiv: 2602.08371