AI RESEARCH

Reward Weighted Classifier-Free Guidance as Policy Improvement in Autoregressive Models

arXiv CS.AI

ArXi:2604.15577v1 Announce Type: cross Consider an auto-regressive model that produces outputs x (e.g., answers to questions, molecules) each of which can be summarized by an attribute vector y (e.g., helpfulness vs. harmlessness, or bio-availability vs. lipophilicity). An arbitrary reward function r(y) encodes tradeoffs between these properties. Typically, tilting the model's sampling distribution to increase this reward is done at