Li Yu


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2025

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RUC Team at SemEval-2025 Task 5: Fast Automated Subject Indexing: A Method Based on Similar Records Matching and Related Subject Ranking
Xia Tian | Yang Xin | Wu Jing | Xiu Heng | Zhang Xin | Li Yu | Gao Tong | Tan Xi | Hu Dong | Chen Tao | Jia Zhi
Proceedings of the 19th International Workshop on Semantic Evaluation (SemEval-2025)

This paper presents MaRSI, an automatic subject indexing method designed to address the limitations of traditional manual indexing and emerging GenAI technologies. Focusing on improving indexing accuracy in cross-lingual contexts and balancing efficiency and accuracy in large-scale datasets, MaRSI mimics human reference learning behavior by constructing semantic indexes from pre-indexed document. It calculates similarity to retrieve relevant references, merges, and reorders their topics to generate index results. Experiments demonstrate that MaRSI outperforms supervised fine-tuning of LLMs on the same dataset, offering advantages in speed, effectiveness, and interpretability.