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The Ethereal
Reward Weighted Classifier-Free Guidance as Policy Improvement in Autoregressive Models
April 16, 2026 ยท Grace Period ยท + Add venue
Authors
Alexander Peysakhovich, William Berman
arXiv ID
2604.15577
Category
cs.LG: Machine Learning
Cross-listed
cs.AI
Citations
0
Abstract
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 training time via reinforcement learning. However, if the reward function changes, re-alignment requires re-training. In this paper, we show that a reward weighted classifier-free guidance (RCFG) can act as a policy improvement operator in this setting, approximating tilting the sampling distribution by the Q function. We apply RCFG to molecular generation, demonstrating that it can optimize novel reward functions at test time. Finally, we show that using RCFG as a teacher and distilling into the base policy to serve as a warm start significantly speeds up convergence for standard RL.
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