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Autores principales: Tu, Zeao, Meng, Xiangdi, He, Yu, Yao, Zihan, Qi, Tianyu, Liu, Jun, Li, Ming
Formato: Preprint
Publicado: 2024
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Acceso en línea:https://arxiv.org/abs/2412.14809
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author Tu, Zeao
Meng, Xiangdi
He, Yu
Yao, Zihan
Qi, Tianyu
Liu, Jun
Li, Ming
author_facet Tu, Zeao
Meng, Xiangdi
He, Yu
Yao, Zihan
Qi, Tianyu
Liu, Jun
Li, Ming
contents Large language models (LLMs) have shown remarkable effectiveness across various domains, with data augmentation methods utilizing GPT for synthetic data generation becoming prevalent. However, the quality and utility of augmented data remain questionable, and current methods lack clear metrics for evaluating data characteristics. To address these challenges, we propose ResoFilter, a novel method that integrates models, data, and tasks to refine datasets. ResoFilter leverages the fine-tuning process to obtain Data-Parameter features for data selection, offering improved interpretability by representing data characteristics through model weights. Our experiments demonstrate that ResoFilter achieves comparable results to full-scale fine-tuning using only half the data in mathematical tasks and exhibits strong generalization across different models and domains. This method provides valuable insights for constructing synthetic datasets and evaluating high-quality data, offering a promising solution for enhancing data augmentation techniques and improving training dataset quality for LLMs. For reproducibility, we will release our code and data upon acceptance.
format Preprint
id arxiv_https___arxiv_org_abs_2412_14809
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle ResoFilter: Fine-grained Synthetic Data Filtering for Large Language Models through Data-Parameter Resonance Analysis
Tu, Zeao
Meng, Xiangdi
He, Yu
Yao, Zihan
Qi, Tianyu
Liu, Jun
Li, Ming
Computation and Language
Large language models (LLMs) have shown remarkable effectiveness across various domains, with data augmentation methods utilizing GPT for synthetic data generation becoming prevalent. However, the quality and utility of augmented data remain questionable, and current methods lack clear metrics for evaluating data characteristics. To address these challenges, we propose ResoFilter, a novel method that integrates models, data, and tasks to refine datasets. ResoFilter leverages the fine-tuning process to obtain Data-Parameter features for data selection, offering improved interpretability by representing data characteristics through model weights. Our experiments demonstrate that ResoFilter achieves comparable results to full-scale fine-tuning using only half the data in mathematical tasks and exhibits strong generalization across different models and domains. This method provides valuable insights for constructing synthetic datasets and evaluating high-quality data, offering a promising solution for enhancing data augmentation techniques and improving training dataset quality for LLMs. For reproducibility, we will release our code and data upon acceptance.
title ResoFilter: Fine-grained Synthetic Data Filtering for Large Language Models through Data-Parameter Resonance Analysis
topic Computation and Language
url https://arxiv.org/abs/2412.14809