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arxiv 2505.06079 v1 pith:WAOZHUPQ submitted 2025-05-09 cs.RO cs.CV

TREND: Tri-teaching for Robust Preference-based Reinforcement Learning with Demonstrations

classification cs.RO cs.CV
keywords preferencetrenddemonstrationschallengeeffectiveexpertfeedbackhigh
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Preference feedback collected by human or VLM annotators is often noisy, presenting a significant challenge for preference-based reinforcement learning that relies on accurate preference labels. To address this challenge, we propose TREND, a novel framework that integrates few-shot expert demonstrations with a tri-teaching strategy for effective noise mitigation. Our method trains three reward models simultaneously, where each model views its small-loss preference pairs as useful knowledge and teaches such useful pairs to its peer network for updating the parameters. Remarkably, our approach requires as few as one to three expert demonstrations to achieve high performance. We evaluate TREND on various robotic manipulation tasks, achieving up to 90% success rates even with noise levels as high as 40%, highlighting its effective robustness in handling noisy preference feedback. Project page: https://shuaiyihuang.github.io/publications/TREND.

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