AIDec 23, 2025

Offline Safe Policy Optimization From Heterogeneous Feedback

arXiv:2512.20173v1h-index: 33
Originality Incremental advance
AI Analysis

This addresses safety challenges in offline RL for domains like robotics, though it appears incremental as it builds on existing preference-based and safe RL methods.

The paper tackles the problem of ensuring safety in offline preference-based reinforcement learning for long-horizon continuous control tasks, where errors in learned reward and cost models accumulate and impair performance. The result is a method called PreSa that learns safe policies directly from preferences and safety labels without explicit reward or cost models, outperforming state-of-the-art baselines and approaches with ground-truth reward and cost.

Offline Preference-based Reinforcement Learning (PbRL) learns rewards and policies aligned with human preferences without the need for extensive reward engineering and direct interaction with human annotators. However, ensuring safety remains a critical challenge across many domains and tasks. Previous works on safe RL from human feedback (RLHF) first learn reward and cost models from offline data, then use constrained RL to optimize a safe policy. While such an approach works in the contextual bandits settings (LLMs), in long horizon continuous control tasks, errors in rewards and costs accumulate, leading to impairment in performance when used with constrained RL methods. To address these challenges, (a) instead of indirectly learning policies (from rewards and costs), we introduce a framework that learns a policy directly based on pairwise preferences regarding the agent's behavior in terms of rewards, as well as binary labels indicating the safety of trajectory segments; (b) we propose \textsc{PreSa} (Preference and Safety Alignment), a method that combines preference learning module with safety alignment in a constrained optimization problem. This optimization problem is solved within a Lagrangian paradigm that directly learns reward-maximizing safe policy \textit{without explicitly learning reward and cost models}, avoiding the need for constrained RL; (c) we evaluate our approach on continuous control tasks with both synthetic and real human feedback. Empirically, our method successfully learns safe policies with high rewards, outperforming state-of-the-art baselines, and offline safe RL approaches with ground-truth reward and cost.

Foundations

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