VEDA: 3D Molecular Generation via Variance-Exploding Diffusion with Annealing
Peining Zhang, Jinbo Bi, Minghu Song

TL;DR
VEDA introduces a novel SE(3)-equivariant diffusion framework with annealing for efficient, accurate 3D molecular structure generation, balancing sampling speed and conformational fidelity.
Contribution
The paper presents VEDA, a unified diffusion model combining variance-exploding diffusion with annealing and a new preconditioning scheme for improved 3D molecular generation.
Findings
Achieves state-of-the-art valency stability and validity with only 100 sampling steps.
Generated structures exhibit significantly lower relaxation energy, indicating higher stability.
Matches the sampling efficiency of flow-based models while maintaining high accuracy.
Abstract
Diffusion models show promise for 3D molecular generation, but face a fundamental trade-off between sampling efficiency and conformational accuracy. While flow-based models are fast, they often produce geometrically inaccurate structures, as they have difficulty capturing the multimodal distributions of molecular conformations. In contrast, denoising diffusion models are more accurate but suffer from slow sampling, a limitation attributed to sub-optimal integration between diffusion dynamics and SE(3)-equivariant architectures. To address this, we propose VEDA, a unified SE(3)-equivariant framework that combines variance-exploding diffusion with annealing to efficiently generate conformationally accurate 3D molecular structures. Specifically, our key technical contributions include: (1) a VE schedule that enables noise injection functionally analogous to simulated annealing, improving…
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Taxonomy
TopicsProtein Structure and Dynamics · Computational Drug Discovery Methods · Machine Learning in Materials Science
