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MetaRM: Shifted Distributions Alignment via Meta-Learning

1 May 2024
Shihan Dou
Yan Liu
Enyu Zhou
Tianlong Li
Haoxiang Jia
Limao Xiong
Xin Zhao
Junjie Ye
Rui Zheng
Tao Gui
Qi Zhang
Xuanjing Huang
    OOD
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Abstract

The success of Reinforcement Learning from Human Feedback (RLHF) in language model alignment is critically dependent on the capability of the reward model (RM). However, as the training process progresses, the output distribution of the policy model shifts, leading to the RM's reduced ability to distinguish between responses. This issue is further compounded when the RM, trained on a specific data distribution, struggles to generalize to examples outside of that distribution. These two issues can be united as a challenge posed by the shifted distribution of the environment. To surmount this challenge, we introduce MetaRM, a method leveraging meta-learning to align the RM with the shifted environment distribution. MetaRM is designed to train the RM by minimizing data loss, particularly for data that can improve the differentiation ability to examples of the shifted target distribution. Extensive experiments demonstrate that MetaRM significantly improves the RM's distinguishing ability in iterative RLHF optimization, and also provides the capacity to identify subtle differences in out-of-distribution samples.

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