English

Expressive Score-Based Priors for Distribution Matching with Geometry-Preserving Regularization

Machine Learning 2025-06-18 v1 Computers and Society

Abstract

Distribution matching (DM) is a versatile domain-invariant representation learning technique that has been applied to tasks such as fair classification, domain adaptation, and domain translation. Non-parametric DM methods struggle with scalability and adversarial DM approaches suffer from instability and mode collapse. While likelihood-based methods are a promising alternative, they often impose unnecessary biases through fixed priors or require explicit density models (e.g., flows) that can be challenging to train. We address this limitation by introducing a novel approach to training likelihood-based DM using expressive score-based prior distributions. Our key insight is that gradient-based DM training only requires the prior's score function -- not its density -- allowing us to train the prior via denoising score matching. This approach eliminates biases from fixed priors (e.g., in VAEs), enabling more effective use of geometry-preserving regularization, while avoiding the challenge of learning an explicit prior density model (e.g., a flow-based prior). Our method also demonstrates better stability and computational efficiency compared to other diffusion-based priors (e.g., LSGM). Furthermore, experiments demonstrate superior performance across multiple tasks, establishing our score-based method as a stable and effective approach to distribution matching. Source code available at https://github.com/inouye-lab/SAUB.

Keywords

Cite

@article{arxiv.2506.14607,
  title  = {Expressive Score-Based Priors for Distribution Matching with Geometry-Preserving Regularization},
  author = {Ziyu Gong and Jim Lim and David I. Inouye},
  journal= {arXiv preprint arXiv:2506.14607},
  year   = {2025}
}

Comments

32 pages, 20 figures. Accepted to ICML 2025

R2 v1 2026-07-01T03:22:03.032Z