Efficient Federated RLHF via Zeroth-Order Policy Optimization

April 20, 2026 ยท Grace Period ยท + Add venue

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Authors Deyi Wang, Qining Zhang, Lei Ying arXiv ID 2604.17747 Category cs.LG: Machine Learning Citations 0
Abstract
This paper considers reinforcement learning from human feedback in a federated learning setting with resource-constrained agents, such as edge devices. We propose an efficient federated RLHF algorithm, named Partitioned, Sign-based Stochastic Zeroth-order Policy Optimization (Par-S$^2$ZPO). The algorithm is built on zeroth-order optimization with binary perturbation, resulting in low communication, computation, and memory complexity by design. Our theoretical analysis establishes an upper bound on the convergence rate of Par-S$^2$ZPO, revealing that it is as efficient as its centralized counterpart in terms of sample complexity but converges faster in terms of policy update iterations. Our experimental results show that it outperforms a FedAvg-based RLHF on four MuJoCo RL tasks.
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