Muhammad Azmi
2025
University of Indonesia at SemEval-2025 Task 11: Evaluating State-of-the-Art Encoders for Multi-Label Emotion Detection
Ikhlasul Hanif
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Eryawan Presma Yulianrifat
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Jaycent Ongris
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Eduardus Tjitrahardja
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Muhammad Azmi
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Rahmat Naufal
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Alfan Wicaksono
Proceedings of the 19th International Workshop on Semantic Evaluation (SemEval-2025)
This paper presents our approach for SemEval 2025 Task 11 Track A, focusing on multilabel emotion classification across 28 languages. We explore two main strategies: fully fine-tuning transformer models and classifier-only training, evaluating different settings such as fine-tuning strategies, model architectures, loss functions, encoders, and classifiers. Our findings suggest that training a classifier on top of prompt-based encoders such as mE5 and BGE yields significantly better results than fully fine-tuning XLMR and mBERT. Our best-performing model on the final leaderboard is an ensemble combining multiple BGE models, where CatBoost serves as the classifier, with different configurations. This ensemble achieves an average F1-macro score of 56.58 across all languages.
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- Ikhlasul Hanif 1
- Rahmat Naufal 1
- Jaycent Ongris 1
- Eduardus Tjitrahardja 1
- Alfan Wicaksono 1
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