LGSep 16, 2025

Exploring Training Data Attribution under Limited Access Constraints

arXiv:2509.12581v1h-index: 3
Originality Incremental advance
AI Analysis

This work addresses practical challenges for deploying TDA in commercial and resource-limited settings, though it is incremental in nature.

The paper tackled the problem of applying training data attribution (TDA) methods in real-world scenarios with limited model access and computational resources, showing that proxy models can enable TDA under constraints and that attribution scores from models not trained on target data remain useful.

Training data attribution (TDA) plays a critical role in understanding the influence of individual training data points on model predictions. Gradient-based TDA methods, popularized by \textit{influence function} for their superior performance, have been widely applied in data selection, data cleaning, data economics, and fact tracing. However, in real-world scenarios where commercial models are not publicly accessible and computational resources are limited, existing TDA methods are often constrained by their reliance on full model access and high computational costs. This poses significant challenges to the broader adoption of TDA in practical applications. In this work, we present a systematic study of TDA methods under various access and resource constraints. We investigate the feasibility of performing TDA under varying levels of access constraints by leveraging appropriately designed solutions such as proxy models. Besides, we demonstrate that attribution scores obtained from models without prior training on the target dataset remain informative across a range of tasks, which is useful for scenarios where computational resources are limited. Our findings provide practical guidance for deploying TDA in real-world environments, aiming to improve feasibility and efficiency under limited access.

Foundations

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