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SURGE: Approximation-free Training Free Particle Filter for Diffusion Surrogate

Author

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  • Lifu Wei
  • Yinuo Ren
  • Naichen Shi
  • Yiping Lu

Abstract

Diffusion-based generative models increasingly rely on inference-time guidance, adding a drift term or reweighting mixture of experts, to improve sample quality on task-specific objectives. However, most existing techniques require repeated score or gradient evaluations, introducing bias, high computational overhead, or both. We introduce \texttt{URGE}, Unbiased Resampling via Girsanov Estimation, a derivative-free inference-time scaling algorithm that performs path-wise importance reweighting via a Girsanov change of measure. Instead of computing gradient-based particle weights in previous work, \texttt{URGE} attaches a simple multiplicative weight to each simulated trajectory and periodically resamples. No score, no Hessian, and no PDE evaluation is required. We establish an equivalence between path-wise and particle-wise SMC: the Girsanov path weight admits a backward conditional expectation that recovers the previous particle-level weights, guaranteeing that both schemes produce the same unbiased terminal law. Empirically, \texttt{URGE} outperforms existing inference-time guidance baselines on synthetic tests and diffusion-model benchmarks, achieving better generation quality, while being significantly simpler to implement and fully gradient-free.

Suggested Citation

  • Lifu Wei & Yinuo Ren & Naichen Shi & Yiping Lu, 2026. "SURGE: Approximation-free Training Free Particle Filter for Diffusion Surrogate," Papers 2605.18745, arXiv.org.
  • Handle: RePEc:arx:papers:2605.18745
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    File URL: http://arxiv.org/pdf/2605.18745
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