Shijia Jiang


2025

We present our approach to the COLING-2025 Regulations Challenge, which evaluates large language models (LLMs) on nine regulatory tasks, such as abbreviation recognition and financial data extraction. To address challenges like domain-specific terminologies and dynamic regulatory contexts, we developed a robust data construction pipeline, integrating proprietary Chinese regulatory data, Fin-GPT datasets, and financial Q&A data. The pipeline applied, but was not limited to, language filtering, semantic screening, and deduplication, resulting in a 30,000-example dataset combining financial regulations and general financial data. Using this dataset, we fine-tuned Llama 3.2-3B-Instruct to create Reg-LLaMA, a specialized model that outperformed baselines on the Regulations Challenge and PIXIU datasets. These results demonstrate the effectiveness of domain-specific data construction in advancing LLMs for regulatory tasks, paving the way for reliable and interpretable AI in regulated industries.