Peih-Ying Lu


2025

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ROCLING-2025 Shared Task: Chinese Dimensional Sentiment Analysis for Medical Self-Reflection Texts
Lung-Hao Lee | Tzu-Mi Lin | Hsiu-Min Shih | Kuo-Kai Shyu | Anna S. Hsu | Peih-Ying Lu
Proceedings of the 37th Conference on Computational Linguistics and Speech Processing (ROCLING 2025)

This paper describes the ROCLING-2025 shared task aimed at Chinese dimensional sentiment analysis for medical self-refection texts, including task organization, data preparation, performance metrics, and evaluation results. A total of six participating teams submitted results for techniques developed for valence-arousal intensity prediction. All datasets with gold standards and evaluation scripts used in this shared task are publicly available online for further research.