AI RESEARCH

Enforcing Constraints in Generative Sampling via Adaptive Correction Scheduling

arXiv CS.LG

ArXi:2605.11214v1 Announce Type: new Hard constraints in generative sampling are typically enforced by projection, applied either once at the end of sampling or after every update. This binary framing overlooks a fundamental issue: projection changes the distribution of states which future updates depend on. As a result, delayed projection can produce samples that are feasible but inconsistent with the intended sampling dynamics, even after final projection. We formalize constraint enforcement as a correction scheduling problem over the generative rollout.