LEASE: Offline Preference-based Reinforcement Learning with High Sample Efficiency
- URL: http://arxiv.org/abs/2412.21001v1
- Date: Mon, 30 Dec 2024 15:10:57 GMT
- Title: LEASE: Offline Preference-based Reinforcement Learning with High Sample Efficiency
- Authors: Xiao-Yin Liu, Guotao Li, Xiao-Hu Zhou, Zeng-Guang Hou,
- Abstract summary: This paper proposes a offLine prEference-bAsed RL with high Sample Efficiency (LEASE) algorithm to generate unlabeled preference data.
Considering the pretrained reward model may generate incorrect labels for unlabeled data, we design an uncertainty-aware mechanism to ensure the performance of reward model.
- Score: 11.295036269748731
- License:
- Abstract: Offline preference-based reinforcement learning (PbRL) provides an effective way to overcome the challenges of designing reward and the high costs of online interaction. However, since labeling preference needs real-time human feedback, acquiring sufficient preference labels is challenging. To solve this, this paper proposes a offLine prEference-bAsed RL with high Sample Efficiency (LEASE) algorithm, where a learned transition model is leveraged to generate unlabeled preference data. Considering the pretrained reward model may generate incorrect labels for unlabeled data, we design an uncertainty-aware mechanism to ensure the performance of reward model, where only high confidence and low variance data are selected. Moreover, we provide the generalization bound of reward model to analyze the factors influencing reward accuracy, and demonstrate that the policy learned by LEASE has theoretical improvement guarantee. The developed theory is based on state-action pair, which can be easily combined with other offline algorithms. The experimental results show that LEASE can achieve comparable performance to baseline under fewer preference data without online interaction.
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