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Turning Black Box into White Box: Dataset Distillation Leaks

Huajie Chen Tianqing Zhu Yuchen Zhong Yang Zhang Shang Wang Feng He Lefeng Zhang Jialiang Shen Minghao Wang Wanlei Zhou
Published
March 1, 2026
Updated
March 1, 2026

Abstract

Dataset distillation compresses a large real dataset into a small synthetic one, enabling models trained on the synthetic data to achieve performance comparable to those trained on the real data. Although synthetic datasets are assumed to be privacy-preserving, we show that existing distillation methods can cause severe privacy leakage because synthetic datasets implicitly encode the weight trajectories of the distilled model, they become over-informative and exploitable by adversaries. To expose this risk, we introduce the Information Revelation Attack (IRA) against state-of-the-art distillation techniques. Experiments show that IRA accurately predicts both the distillation algorithm and model architecture, and can successfully infer membership and recover sensitive samples from the real dataset.

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