A Contextual Quality Reward Model for Reliable and Efficient Best-of-N Sampling
Abstract
A new framework using an outside option in preference data collection and modeling improves reliability and efficiency in preference alignment techniques.
Modern preference alignment techniques, such as Best-of-N (BoN) sampling, rely on reward models trained with pairwise comparison data. While effective at learning relative preferences, this paradigm fails to capture a signal of response acceptability, leaving systems vulnerable to selecting the least bad of many unacceptable options. This is particularly problematic for hard prompts, where the risk of such false acceptances increases with the number of samples. In this paper, we address this critical reliability gap by introducing a new data collection and modeling framework. By augmenting preference data with an outside option, inspired by discrete choice models, we train a reward model that can distinguish not just what is better, but what is good enough. We leverage this capability to create an adaptive inference strategy, best of mini-N in-loop, which partitions the generation budget into sequential loops with a calibrated, early-exit condition. Our experiments show that when tuned as an alignment guardrail, it reduces reliability failures by 70\%, and when tuned as an inference accelerator, it improves average inference speed by over 22\% in IMDB-sentiment setting. We thus provide a principled and flexible framework for practitioners to explicitly manage the trade-off between reliability and computational efficiency.
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This paper presents a new method for inference-time alignment that learns the quality of responses by including an outside option (a thumbs-down for both) in the training data. It introduces best of mini-N in-loop, an adaptive strategy to find an acceptable response, but also shows that this can increase false acceptances (accepting a bad response). To address this, an adaptive calibration method is provided to control the false acceptance rate, and in scenarios where this is less of a concern, the best of mini-N in-loop can significantly boost inference speed by quickly finding a good enough response.
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