RS-DPO: A Hybrid Rejection Sampling and Direct Preference Optimization Method for Alignment of Large Language Models
Reinforcement learning from human feedback (RLHF) has been extensively employed to align large language models with user intent. However, proximal policy optimization (PPO) based RLHF is occasionally unstable requiring significant hyperparameter finetuning, and computationally expensive to maximize...
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Zusammenfassung: | Reinforcement learning from human feedback (RLHF) has been extensively
employed to align large language models with user intent. However, proximal
policy optimization (PPO) based RLHF is occasionally unstable requiring
significant hyperparameter finetuning, and computationally expensive to
maximize the estimated reward during alignment. Recently, direct preference
optimization (DPO) is proposed to address those challenges. However, DPO relies
on contrastive responses generated from human annotator and alternative LLM,
instead of the policy model, limiting the effectiveness of the RLHF. In this
paper, we addresses both challenges by systematically combining rejection
sampling (RS) and DPO. Our proposed method, RS-DPO, initiates with the
development of a supervised fine-tuned policy model (SFT). A varied set of k
responses per prompt are sampled directly from the SFT model. RS-DPO identifies
pairs of contrastive samples based on their reward distribution. Finally, we
apply DPO with the contrastive samples to align the model to human preference.
Our experiments indicate that our proposed method effectively fine-tunes LLMs
with limited resource environments, leading to improved alignment with user
intent. Furthermore, it outperforms existing methods, including RS, PPO, and
DPO. |
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DOI: | 10.48550/arxiv.2402.10038 |