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PrefMoE: Robust Preference Modeling with Mixture-of-Experts Reward Learning

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Preference-based reinforcement learning offers a scalable alternative to manual reward engineering by learning reward structures from comparative feedback. However, large-scale preference datasets, whether collected from crowdsourced annotators or generated by synthetic teachers, often contain heterogeneous and partially conflicting supervision, including disagreement across annotators and inconsistency within annotators. Existing reward learning methods typically fit a single reward model to such data, forcing it to average incompatible signals and thereby limiting robustness. To solve this, we propose PrefMoE, a mixture-of-experts reward learning framework for robust preference modeling. PrefMoE learns multiple specialized reward experts and uses trajectory-level soft routing to combine them adaptively, enabling the model to capture diverse latent preference patterns under noisy and heterogeneous preference supervision. A load-balancing regularizer further stabilizes training by preventing expert collapse. Across locomotion benchmarks from D4RL and manipulation tasks from MetaWorld, PrefMoE improves preference prediction robustness and leads to more reliable downstream policy learning than strong single-model baselines.

Ziqin Yuan, Ruiqi Wang, Dezhong Zhao, Baijian Yang, Byung-Cheol Min• 2026

Related benchmarks

TaskDatasetResultRank
LocomotionD4RL MuJoCo Tasks
Average D4RL Locomotion Score (v2)84.3
29
NavigationAntMaze
Success Rate (Large Play v2)44.8
4
Robotic ManipulationMetaWorld
Button Press Success Rate81.4
4
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