中文

Diffusion-based Denoising Beats Vanilla Score Matching in Parameter Estimation: A Theoretical Explanation

机器学习 2026-05-25 v1 机器学习 统计理论 统计方法学 统计理论

摘要

Score matching is an alternative to maximum likelihood estimation when the normalizing constant is unknown or too costly to evaluate. However, vanilla score matching has shown to be inefficient relative to maximum likelihood estimation for multimodal distributions with well-separated modes, which are commonly encountered in practical applications. We compare a novel diffusion-based denoising score matching estimator (DDSME) to the vanilla score matching estimator (SME) in this scenario. In particular, we prove statistical guarantees for both estimators, showing that the error bound for the vanilla SME worsens when the separation between the modes increases, which can be avoided in case of the DDSME with suitable hyperparameter tuning. This provides a novel theoretical explanation for the superior behavior of diffusion-based score matching over the vanilla version.

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引用

@article{arxiv.2605.22950,
  title  = {Diffusion-based Denoising Beats Vanilla Score Matching in Parameter Estimation: A Theoretical Explanation},
  author = {Benedikt Lütke Schwienhorst and Nadja Klein and Johannes Lederer},
  journal= {arXiv preprint arXiv:2605.22950},
  year   = {2026}
}