Non-equilibrium Annealed Adjoint Sampler
Non-equilibrium Annealed Adjoint Sampler
Recently, there has been significant progress in learning-based diffusion samplers, which aim to sample from a given unnormalized density. These methods typically follow one of two paradigms: (i) formulating sampling as an unbiased stochastic optimal control (SOC) problem using a canonical reference process, or (ii) refining annealed path measures through importance-weighted sampling. Although annealing approaches have advantages in guiding samples toward high-density regions, reliance on importance sampling leads to high variance and limited scalability in practice. In this paper, we introduce the \textbf{Non-equilibrium Annealed Adjoint Sampler (NAAS)}, a novel SOC-based diffusion sampler that leverages annealed reference dynamics without resorting to importance sampling. NAAS employs a lean adjoint system inspired by adjoint matching, enabling efficient and scalable training. We demonstrate the effectiveness of our approach across a range of tasks, including sampling from classical energy landscapes and molecular Boltzmann distribution.
Yongxin Chen、Molei Tao、Guan-Horng Liu、Jaemoo Choi
计算技术、计算机技术
Yongxin Chen,Molei Tao,Guan-Horng Liu,Jaemoo Choi.Non-equilibrium Annealed Adjoint Sampler[EB/OL].(2025-06-25)[2025-07-02].https://arxiv.org/abs/2506.18165.点此复制
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