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arxiv: 2503.07988 · v1 · pith:XJ6RBS3Vnew · submitted 2025-03-11 · 💻 cs.LG · cs.AI

Provable Zero-Shot Generalization in Offline Reinforcement Learning

classification 💻 cs.LG cs.AI
keywords offlinepolicyenvironmentsgeneralizationlearningpessimisticreinforcementagent
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In this work, we study offline reinforcement learning (RL) with zero-shot generalization property (ZSG), where the agent has access to an offline dataset including experiences from different environments, and the goal of the agent is to train a policy over the training environments which performs well on test environments without further interaction. Existing work showed that classical offline RL fails to generalize to new, unseen environments. We propose pessimistic empirical risk minimization (PERM) and pessimistic proximal policy optimization (PPPO), which leverage pessimistic policy evaluation to guide policy learning and enhance generalization. We show that both PERM and PPPO are capable of finding a near-optimal policy with ZSG. Our result serves as a first step in understanding the foundation of the generalization phenomenon in offline reinforcement learning.

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  1. Formalizing Task-Space Complexity for Zero-Shot Generalization

    cs.LG 2026-06 unverdicted novelty 6.0

    Introduces signed divergence to bound generalization gaps and defines task-space complexity as the minimum source contexts needed for ε-coverage under local smoothness, with set-cover reduction and empirical validatio...