Score: 2

Effective Data Pruning through Score Extrapolation

Published: June 10, 2025 | arXiv ID: 2506.09010v2

By: Sebastian Schmidt , Prasanga Dhungel , Christoffer Löffler and more

Potential Business Impact:

Trains smart programs faster with less data.

Business Areas:
Predictive Analytics Artificial Intelligence, Data and Analytics, Software

Training advanced machine learning models demands massive datasets, resulting in prohibitive computational costs. To address this challenge, data pruning techniques identify and remove redundant training samples while preserving model performance. Yet, existing pruning techniques predominantly require a full initial training pass to identify removable samples, negating any efficiency benefits for single training runs. To overcome this limitation, we introduce a novel importance score extrapolation framework that requires training on only a small subset of data. We present two initial approaches in this framework - k-nearest neighbors and graph neural networks - to accurately predict sample importance for the entire dataset using patterns learned from this minimal subset. We demonstrate the effectiveness of our approach for 2 state-of-the-art pruning methods (Dynamic Uncertainty and TDDS), 4 different datasets (CIFAR-10, CIFAR-100, Places-365, and ImageNet), and 3 training paradigms (supervised, unsupervised, and adversarial). Our results indicate that score extrapolation is a promising direction to scale expensive score calculation methods, such as pruning, data attribution, or other tasks.

Country of Origin
🇩🇪 Germany

Repos / Data Links

Page Count
21 pages

Category
Computer Science:
Machine Learning (CS)