Yaguang Wu


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2025

pdf bib
DIDS: Domain Impact-aware Data Sampling for Large Language Model Training
Weijie Shi | Jipeng Zhang | Yaguang Wu | Jingzhi Fang | Shibo Zhang | Yao Zhao | Hao Chen | Ruiyuan Zhang | Yue Cui | Jia Zhu | Sirui Han | Jiajie Xu | Xiaofang Zhou
Proceedings of the 2025 Conference on Empirical Methods in Natural Language Processing

Large language models (LLMs) are commonly trained on multi-domain datasets, where domain sampling strategies significantly impact model performance due to varying domain importance across downstream tasks. Existing approaches for optimizing domain-level sampling strategies struggle with maintaining intra-domain consistency and accurately measuring domain impact. In this paper, we present Domain Impact-aware Data Sampling (DIDS). To ensure intra-domain consistency, a gradient clustering algorithm is proposed to group training data based on their learning effects, where a proxy language model and dimensionality reduction are employed to reduce computational overhead. To accurately measure domain impact, we develop a Fisher Information Matrix (FIM) guided metric that quantifies how domain-specific parameter updates affect the model’s output distributions on downstream tasks, with theoretical guarantees. Furthermore, to determine optimal sampling ratios, DIDS combines both the FIM-guided domain impact assessment and loss learning trajectories that indicate domain-specific potential, while accounting for diminishing marginal returns. Extensive experiments demonstrate that DIDS achieves 3.4% higher average performance while maintaining comparable training efficiency. The code is available at https://github.com/shiweijiezero/DIDS.