Saved in:
Bibliographic Details
Main Authors: Wang, Weiyi, Deng, Junwei, Hu, Yuzheng, Zhang, Shiyuan, Jiang, Xirui, Zhang, Runting, Zhao, Han, Ma, Jiaqi W.
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2505.24261
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866909864431714304
author Wang, Weiyi
Deng, Junwei
Hu, Yuzheng
Zhang, Shiyuan
Jiang, Xirui
Zhang, Runting
Zhao, Han
Ma, Jiaqi W.
author_facet Wang, Weiyi
Deng, Junwei
Hu, Yuzheng
Zhang, Shiyuan
Jiang, Xirui
Zhang, Runting
Zhao, Han
Ma, Jiaqi W.
contents Data attribution methods, which quantify the influence of individual training data points on a machine learning model, have gained increasing popularity in data-centric applications in modern AI. Despite a recent surge of new methods developed in this space, the impact of hyperparameter tuning in these methods remains under-explored. In this work, we present the first large-scale empirical study to understand the hyperparameter sensitivity of common data attribution methods. Our results show that most methods are indeed sensitive to certain key hyperparameters. However, unlike typical machine learning algorithms -- whose hyperparameters can be tuned using computationally-cheap validation metrics -- evaluating data attribution performance often requires retraining models on subsets of training data, making such metrics prohibitively costly for hyperparameter tuning. This poses a critical open challenge for the practical application of data attribution methods. To address this challenge, we advocate for better theoretical understandings of hyperparameter behavior to inform efficient tuning strategies. As a case study, we provide a theoretical analysis of the regularization term that is critical in many variants of influence function methods. Building on this analysis, we propose a lightweight procedure for selecting the regularization value without model retraining, and validate its effectiveness across a range of standard data attribution benchmarks. Overall, our study identifies a fundamental yet overlooked challenge in the practical application of data attribution, and highlights the importance of careful discussion on hyperparameter selection in future method development.
format Preprint
id arxiv_https___arxiv_org_abs_2505_24261
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Taming Hyperparameter Sensitivity in Data Attribution: Practical Selection Without Costly Retraining
Wang, Weiyi
Deng, Junwei
Hu, Yuzheng
Zhang, Shiyuan
Jiang, Xirui
Zhang, Runting
Zhao, Han
Ma, Jiaqi W.
Machine Learning
Data attribution methods, which quantify the influence of individual training data points on a machine learning model, have gained increasing popularity in data-centric applications in modern AI. Despite a recent surge of new methods developed in this space, the impact of hyperparameter tuning in these methods remains under-explored. In this work, we present the first large-scale empirical study to understand the hyperparameter sensitivity of common data attribution methods. Our results show that most methods are indeed sensitive to certain key hyperparameters. However, unlike typical machine learning algorithms -- whose hyperparameters can be tuned using computationally-cheap validation metrics -- evaluating data attribution performance often requires retraining models on subsets of training data, making such metrics prohibitively costly for hyperparameter tuning. This poses a critical open challenge for the practical application of data attribution methods. To address this challenge, we advocate for better theoretical understandings of hyperparameter behavior to inform efficient tuning strategies. As a case study, we provide a theoretical analysis of the regularization term that is critical in many variants of influence function methods. Building on this analysis, we propose a lightweight procedure for selecting the regularization value without model retraining, and validate its effectiveness across a range of standard data attribution benchmarks. Overall, our study identifies a fundamental yet overlooked challenge in the practical application of data attribution, and highlights the importance of careful discussion on hyperparameter selection in future method development.
title Taming Hyperparameter Sensitivity in Data Attribution: Practical Selection Without Costly Retraining
topic Machine Learning
url https://arxiv.org/abs/2505.24261