AI RESEARCH

Explaining and Preventing Alignment Collapse in Iterative RLHF

arXiv CS.LG

ArXi:2605.04266v1 Announce Type: new Reinforcement learning from human feedback (RLHF) typically assumes a static or non-strategic reward model (RM). In iterative deployment, however, the policy generates the data on which the RM is retrained, creating a feedback loop. Building on the Stackelberg game formulation of this interaction, we derive an analytical decomposition of the policy's true optimization gradient into a standard policy gradient and a parameter-steering term that captures the policy's influence on the RM's future parameters.