AI RESEARCH
AdaBoN: Adaptive Best-of-N Alignment
arXiv CS.AI
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ArXi:2505.12050v3 Announce Type: replace-cross Recent advances in test-time alignment methods, such as Best-of-N sampling, offer a simple and effective way to steer language models (LMs) toward preferred behaviors using reward models (RM). However, these approaches can be computationally expensive, especially when applied uniformly across prompts without accounting for differences in alignment difficulty. In this work, we propose a prompt-adaptive strategy for Best-of-N alignment that allocates inference-time compute efficiently.