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Main Authors: Zhao, Zhenghao, Wang, Haoxuan, Shang, Yuzhang, Wang, Kai, Yan, Yan
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2408.14506
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author Zhao, Zhenghao
Wang, Haoxuan
Shang, Yuzhang
Wang, Kai
Yan, Yan
author_facet Zhao, Zhenghao
Wang, Haoxuan
Shang, Yuzhang
Wang, Kai
Yan, Yan
contents Dataset distillation aims to synthesize a small, information-rich dataset from a large one for efficient model training. However, existing dataset distillation methods struggle with long-tailed datasets, which are prevalent in real-world scenarios. By investigating the reasons behind this unexpected result, we identified two main causes: 1) The distillation process on imbalanced datasets develops biased gradients, leading to the synthesis of similarly imbalanced distilled datasets. 2) The experts trained on such datasets perform suboptimally on tail classes, resulting in misguided distillation supervision and poor-quality soft-label initialization. To address these issues, we first propose Distribution-agnostic Matching to avoid directly matching the biased expert trajectories. It reduces the distance between the student and the biased expert trajectories and prevents the tail class bias from being distilled to the synthetic dataset. Moreover, we improve the distillation guidance with Expert Decoupling, which jointly matches the decoupled backbone and classifier to improve the tail class performance and initialize reliable soft labels. This work pioneers the field of long-tailed dataset distillation, marking the first effective effort to distill long-tailed datasets.
format Preprint
id arxiv_https___arxiv_org_abs_2408_14506
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Distilling Long-tailed Datasets
Zhao, Zhenghao
Wang, Haoxuan
Shang, Yuzhang
Wang, Kai
Yan, Yan
Machine Learning
Dataset distillation aims to synthesize a small, information-rich dataset from a large one for efficient model training. However, existing dataset distillation methods struggle with long-tailed datasets, which are prevalent in real-world scenarios. By investigating the reasons behind this unexpected result, we identified two main causes: 1) The distillation process on imbalanced datasets develops biased gradients, leading to the synthesis of similarly imbalanced distilled datasets. 2) The experts trained on such datasets perform suboptimally on tail classes, resulting in misguided distillation supervision and poor-quality soft-label initialization. To address these issues, we first propose Distribution-agnostic Matching to avoid directly matching the biased expert trajectories. It reduces the distance between the student and the biased expert trajectories and prevents the tail class bias from being distilled to the synthetic dataset. Moreover, we improve the distillation guidance with Expert Decoupling, which jointly matches the decoupled backbone and classifier to improve the tail class performance and initialize reliable soft labels. This work pioneers the field of long-tailed dataset distillation, marking the first effective effort to distill long-tailed datasets.
title Distilling Long-tailed Datasets
topic Machine Learning
url https://arxiv.org/abs/2408.14506