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Structural Assessment for Understanding and Guiding Dataset Distillation in Discrete Token Space

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abstract

Dataset distillation (DD) has proven to reduce training cost while preserving accuracy. While promising, the factors that make one distilled dataset more effective than another remain poorly understood. In this work, we investigate this question through the lens of discrete visual tokenizers. Whereas many prior DD efforts emphasize matching global data distributions, we suggest that the effectiveness depends on which semantic concepts are captured and how they are composed. Discrete visual tokenizers provide a finite vocabulary that enables direct statistical analysis of such compositional structure. Through quantitative analysis of token-level statistics, we introduce the structural score to measure the adequacy of token compositions. We observe that distilled datasets with balanced token composition yield higher validation performance. On the other hand, divergence from the original data does not necessarily harm performance. We further show that samples with high structural scores in the discrete token space can effectively guide diffusion-based DD. Our findings highlight the importance of token composition in dataset effectiveness, offering a principled complement to distributional similarity considerations in DD.

fields

cs.CV 1

years

2026 1

verdicts

UNVERDICTED 1

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REDI: Corpus Aware Patch Ranking for DINOv3 Token Reduction

cs.CV · 2026-06-30 · unverdicted · novelty 6.0

REDI combines supervised TF-IDF corpus scores over DINOv3 visual words with attention maps to rank patches, reducing sequence length 46.8% while raising Top-1 accuracy from 83.514% to 84.706% on ImageNet-1K.

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  • REDI: Corpus Aware Patch Ranking for DINOv3 Token Reduction cs.CV · 2026-06-30 · unverdicted · none · ref 4 · internal anchor

    REDI combines supervised TF-IDF corpus scores over DINOv3 visual words with attention maps to rank patches, reducing sequence length 46.8% while raising Top-1 accuracy from 83.514% to 84.706% on ImageNet-1K.