Saved in:
Bibliographic Details
Main Authors: Yuan, Bowen, Fu, Yuxia, Wang, Zijian, Luo, Yadan, Huang, Zi
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2503.13935
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866917959469891584
author Yuan, Bowen
Fu, Yuxia
Wang, Zijian
Luo, Yadan
Huang, Zi
author_facet Yuan, Bowen
Fu, Yuxia
Wang, Zijian
Luo, Yadan
Huang, Zi
contents Dataset Condensation (DC) aims to obtain a condensed dataset that allows models trained on the condensed dataset to achieve performance comparable to those trained on the full dataset. Recent DC approaches increasingly focus on encoding knowledge into realistic images with soft labeling, for their scalability to ImageNet-scale datasets and strong capability of cross-domain generalization. However, this strong performance comes at a substantial storage cost which could significantly exceed the storage cost of the original dataset. We argue that the three key properties to alleviate this performance-storage dilemma are informativeness, discriminativeness, and compressibility of the condensed data. Towards this end, this paper proposes a \textbf{S}oft label compression-centric dataset condensation framework using \textbf{CO}ding \textbf{R}at\textbf{E} (SCORE). SCORE formulates dataset condensation as a min-max optimization problem, which aims to balance the three key properties from an information-theoretic perspective. In particular, we theoretically demonstrate that our coding rate-inspired objective function is submodular, and its optimization naturally enforces low-rank structure in the soft label set corresponding to each condensed data. Extensive experiments on large-scale datasets, including ImageNet-1K and Tiny-ImageNet, demonstrate that SCORE outperforms existing methods in most cases. Even with 30$\times$ compression of soft labels, performance decreases by only 5.5\% and 2.7\% for ImageNet-1K with IPC 10 and 50, respectively. Code will be released upon paper acceptance.
format Preprint
id arxiv_https___arxiv_org_abs_2503_13935
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle SCORE: Soft Label Compression-Centric Dataset Condensation via Coding Rate Optimization
Yuan, Bowen
Fu, Yuxia
Wang, Zijian
Luo, Yadan
Huang, Zi
Computer Vision and Pattern Recognition
Dataset Condensation (DC) aims to obtain a condensed dataset that allows models trained on the condensed dataset to achieve performance comparable to those trained on the full dataset. Recent DC approaches increasingly focus on encoding knowledge into realistic images with soft labeling, for their scalability to ImageNet-scale datasets and strong capability of cross-domain generalization. However, this strong performance comes at a substantial storage cost which could significantly exceed the storage cost of the original dataset. We argue that the three key properties to alleviate this performance-storage dilemma are informativeness, discriminativeness, and compressibility of the condensed data. Towards this end, this paper proposes a \textbf{S}oft label compression-centric dataset condensation framework using \textbf{CO}ding \textbf{R}at\textbf{E} (SCORE). SCORE formulates dataset condensation as a min-max optimization problem, which aims to balance the three key properties from an information-theoretic perspective. In particular, we theoretically demonstrate that our coding rate-inspired objective function is submodular, and its optimization naturally enforces low-rank structure in the soft label set corresponding to each condensed data. Extensive experiments on large-scale datasets, including ImageNet-1K and Tiny-ImageNet, demonstrate that SCORE outperforms existing methods in most cases. Even with 30$\times$ compression of soft labels, performance decreases by only 5.5\% and 2.7\% for ImageNet-1K with IPC 10 and 50, respectively. Code will be released upon paper acceptance.
title SCORE: Soft Label Compression-Centric Dataset Condensation via Coding Rate Optimization
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2503.13935