AI RESEARCH

Revisiting the (Sub)Optimality of Best-of-N for Inference-Time Alignment

arXiv CS.AI

ArXi:2603.05739v1 Announce Type: cross Best-of-N (BoN) sampling is a widely used inference-time alignment method for language models, whereby N candidate responses are sampled from a reference model and the one with the highest predicted reward according to a learned reward model is selected. Despite its widespread practical use, recent theoretical work has suggested that it is statistically suboptimal and vulnerable to reward hacking, the process by which models exploit weaknesses in the learned reward model to achieve high estimated reward without genuinely improving performance.