English

PRISM: Precision-Recall Informed Data-Free Knowledge Distillation via Generative Diffusion

Computer Vision and Pattern Recognition 2025-09-23 v1

Abstract

Data-free knowledge distillation (DFKD) transfers knowledge from a teacher to a student without access to the real in-distribution (ID) data. While existing methods perform well on small-scale images, they suffer from mode collapse when synthesizing large-scale images, resulting in limited knowledge transfer. Recently, leveraging advanced generative models to synthesize photorealistic images has emerged as a promising alternative. Nevertheless, directly using off-the-shelf diffusion to generate datasets faces the precision-recall challenges: 1) ensuring synthetic data aligns with the real distribution, and 2) ensuring coverage of the real ID manifold. In response, we propose PRISM, a precision-recall informed synthesis method. Specifically, we introduce Energy-guided Distribution Alignment to avoid the generation of out-of-distribution samples, and design the Diversified Prompt Engineering to enhance coverage of the real ID manifold. Extensive experiments on various large-scale image datasets demonstrate the superiority of PRISM. Moreover, we demonstrate that models trained with PRISM exhibit strong domain generalization.

Keywords

Cite

@article{arxiv.2509.16897,
  title  = {PRISM: Precision-Recall Informed Data-Free Knowledge Distillation via Generative Diffusion},
  author = {Xuewan He and Jielei Wang and Zihan Cheng and Yuchen Su and Shiyue Huang and Guoming Lu},
  journal= {arXiv preprint arXiv:2509.16897},
  year   = {2025}
}
R2 v1 2026-07-01T05:47:56.076Z