AI RESEARCH
Robust Inference-Time Steering of Protein Diffusion Models via Embedding Optimization
arXiv CS.LG
•
ArXi:2602.05285v2 Announce Type: replace A core challenge in structural biophysics is generating biomolecular conformations that are both physically plausible and consistent with experimental measurements. While sequence-to-structure diffusion models provide powerful priors, posterior sampling methods steer generation by perturbing atomic coordinates with gradients from experimental likelihoods. However, when the target lies in a low-density region of the prior, these methods require aggressive upweighting of the likelihood that can destabilize sampling and be sensitive to hyperparameters.