CVNov 22, 2024

Zero-Shot Coreset Selection: Efficient Pruning for Unlabeled Data

arXiv:2411.15349v17 citationsh-index: 12Has Code
Originality Incremental advance
AI Analysis

This addresses the challenge of scaling deep learning to real-world unlabeled data, which is the majority of available data, by enabling efficient pruning without annotation, though it is incremental as it builds on existing coreset selection concepts.

The paper tackles the problem of selecting representative subsets (coresets) from unlabeled data to reduce storage, annotation, and training costs in deep learning, achieving a downstream model accuracy of 53.99% on ImageNet with only 10% training data while outperforming label-based methods.

Deep learning increasingly relies on massive data with substantial costs for storage, annotation, and model training. To reduce these costs, coreset selection aims to find a representative subset of data to train models while ideally performing on par with the full data training. State-of-the-art coreset methods use carefully-designed criteria to quantify the importance of each data example via ground truth labels and dataset-specific training, then select examples whose scores lie in a certain range to construct a coreset. These methods work well in their respective settings, however, they cannot select data that are unlabeled, which is the majority of real-world data. To that end, this paper motivates and formalizes the problem of unlabeled coreset selection to enable greater scale and reduce annotation costs for deep learning. As a solution, we develop Zero-Shot Coreset Selection (ZCore), a method that efficiently selects coresets without ground truth labels or training on candidate data. Instead, ZCore uses existing foundation models to generate a zero-shot embedding space for unlabeled data, then quantifies the relative importance of each example based on overall coverage and redundancy within the embedding distribution. We evaluate ZCore on four datasets and outperform several state-of-the-art label-based methods, leading to a strong baseline for future research in unlabeled coreset selection. On ImageNet, ZCore selections achieve a downstream model accuracy of 53.99% with only 10% training data, which outperforms label-based methods while removing annotation requirements for 1.15 million images. Our code is publicly available at https://github.com/voxel51/zcore.

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