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Preference-Guided Reflective Sampling for Aligning Language Models

A Preference-Guided Reflective Sampling method optimizes response generation to human preferences, improving data efficiency and quality in reinforcement learning from human feedback for large language models.

Year
2024
Venue
arXiv 2024
Authors
2
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arxiv.org/abs/2408.12163v2ARXIV-DEFAULT
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Abstract

Iterative data generation and model re-training can effectively align large language models(LLMs) to human preferences. The process of data sampling is crucial, as it significantly influences the success of policy improvement. Repeated random sampling is a widely used method that independently queries the model multiple times to generate outputs. In this work, we propose a more effective sampling method, named Preference-Guided Reflective Sampling (PRS). Unlike random sampling, PRS employs a tree-based generation framework to enable more efficient sampling. It leverages adaptive self-refinement techniques to better explore the sampling space. By specifying user preferences in natural language, PRS can further optimize response generation according to these preferences. As a result, PRS can align models to diverse user preferences. Our experiments demonstrate that PRS generates higher-quality responses with significantly higher rewards. On AlpacaEval and Arena-Hard, PRS substantially outperforms repeated random sampling in best-of-$N$ sampling. Moreover, PRS shows strong performance when applied in iterative offline RL training.

Authors

2