cs.AI updates on arXiv.org 07月23日 12:03
LLM Data Selection and Utilization via Dynamic Bi-level Optimization
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本文提出一种新的数据加权模型(DWM),通过动态调整数据权重,优化LLM训练数据利用效率,实验证明其能提升模型性能并适用于不同规模模型。

arXiv:2507.16178v1 Announce Type: cross Abstract: While large-scale training data is fundamental for developing capable large language models (LLMs), strategically selecting high-quality data has emerged as a critical approach to enhance training efficiency and reduce computational costs. Current data selection methodologies predominantly rely on static, training-agnostic criteria, failing to account for the dynamic model training and data interactions. In this paper, we propose a new Data Weighting Model (DWM) to adjust the weight of selected data within each batch to achieve a dynamic data utilization during LLM training. Specially, to better capture the dynamic data preference of the trained model, a bi-level optimization framework is implemented to update the weighting model. Our experiments demonstrate that DWM enhances the performance of models trained with randomly-selected data, and the learned weighting model can be transferred to enhance other data selection methods and models of different sizes. Moreover, we further analyze how a model's data preferences evolve throughout training, providing new insights into the data preference of the model during training.

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数据加权模型 LLM训练 数据利用效率 模型性能 动态调整
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