RBF-Solver: A Multistep Sampler for Diffusion Probabilistic Models via Radial Basis Functions
arXiv cs.LG / 3/17/2026
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Key Points
- The paper introduces RBF-Solver, a multistep diffusion sampler that interpolates model evaluations with Gaussian radial basis functions and learns shape parameters to follow optimal sampling trajectories.
- At first order, RBF-Solver reduces to the Euler method (DDIM), and as the shape parameters approach infinity it converges to Adams methods, ensuring compatibility with existing samplers.
- Because Gaussian RBFs are local, RBF-Solver maintains high image fidelity even at fourth order or higher, where previous polynomial-based samplers deteriorate.
- Empirically, it achieves an FID of 2.87 on CIFAR-10 with Score-SDE at 15 function evaluations and 2.48 at 40 evaluations; for conditional ImageNet 256x256 with Guided Diffusion at guidance 8.0, it yields substantial gains in the low-NFE range (5–10) with a 16.12–33.73% reduction in FID relative to polynomial-based samplers.
- The results indicate broad applicability for improving diffusion model sampling efficiency and fidelity across unconditional and conditional generation settings.
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