ChengYan Wu
2025
M-ABSA: A Multilingual Dataset for Aspect-Based Sentiment Analysis
ChengYan Wu
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Bolei Ma
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Yihong Liu
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Zheyu Zhang
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Ningyuan Deng
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Yanshu Li
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Baolan Chen
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Yi Zhang
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Yun Xue
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Barbara Plank
Proceedings of the 2025 Conference on Empirical Methods in Natural Language Processing
Aspect-based sentiment analysis (ABSA) is a crucial task in information extraction and sentiment analysis, aiming to identify aspects with associated sentiment elements in text. However, existing ABSA datasets are predominantly English-centric, limiting the scope for multilingual evaluation and research. To bridge this gap, we present M-ABSA, a comprehensive dataset spanning 7 domains and 21 languages, making it the most extensive multilingual parallel dataset for ABSA to date. Our primary focus is on triplet extraction, which involves identifying aspect terms, aspect categories, and sentiment polarities. The dataset is constructed through an automatic translation process with human review to ensure quality. We perform extensive experiments using various baselines to assess performance and compatibility on M-ABSA. Our empirical findings highlight that the dataset enables diverse evaluation tasks, such as multilingual and multi-domain transfer learning, and large language model evaluation, underscoring its inclusivity and its potential to drive advancements in multilingual ABSA research.
Multimodal Emotion Recognition in Conversations: A Survey of Methods, Trends, Challenges and Prospects
ChengYan Wu
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Yiqiang Cai
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Yang Liu
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Pengxu Zhu
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Yun Xue
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Ziwei Gong
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Julia Hirschberg
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Bolei Ma
Findings of the Association for Computational Linguistics: EMNLP 2025
While text-based emotion recognition methods have achieved notable success, real-world dialogue systems often demand a more nuanced emotional understanding than any single modality can offer. Multimodal Emotion Recognition in Conversations (MERC) has thus emerged as a crucial direction for enhancing the naturalness and emotional understanding of human-computer interaction. Its goal is to accurately recognize emotions by integrating information from various modalities such as text, speech, and visual signals. This survey offers a systematic overview of MERC, including its motivations, core tasks, representative methods, and evaluation strategies. We further examine recent trends, highlight key challenges, and outline future directions. As interest in emotionally intelligent systems grows, this survey provides timely guidance for advancing MERC research.
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- Bolei Ma 2
- Yun Xue (薛云) 2
- Yiqiang Cai 1
- Baolan Chen 1
- Ningyuan Deng 1
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