TasksSotADatasetsPapersMethodsSubmitAbout
Papers With Code 2

A community resource for machine learning research: papers, code, benchmarks, and state-of-the-art results.

Explore

Notable BenchmarksAll SotADatasetsPapersMethods

Community

Submit ResultsAbout

Data sourced from the PWC Archive (CC-BY-SA 4.0). Built by the community, for the community.

Papers/Koopman Q-learning: Offline Reinforcement Learning via Sym...

Koopman Q-learning: Offline Reinforcement Learning via Symmetries of Dynamics

Matthias Weissenbacher, Samarth Sinha, Animesh Garg, Yoshinobu Kawahara

2021-11-02Reinforcement LearningOffline RLData AugmentationD4RLQ-Learningreinforcement-learning
PaperPDF

Abstract

Offline reinforcement learning leverages large datasets to train policies without interactions with the environment. The learned policies may then be deployed in real-world settings where interactions are costly or dangerous. Current algorithms over-fit to the training dataset and as a consequence perform poorly when deployed to out-of-distribution generalizations of the environment. We aim to address these limitations by learning a Koopman latent representation which allows us to infer symmetries of the system's underlying dynamic. The latter is then utilized to extend the otherwise static offline dataset during training; this constitutes a novel data augmentation framework which reflects the system's dynamic and is thus to be interpreted as an exploration of the environments phase space. To obtain the symmetries we employ Koopman theory in which nonlinear dynamics are represented in terms of a linear operator acting on the space of measurement functions of the system and thus symmetries of the dynamics may be inferred directly. We provide novel theoretical results on the existence and nature of symmetries relevant for control systems such as reinforcement learning settings. Moreover, we empirically evaluate our method on several benchmark offline reinforcement learning tasks and datasets including D4RL, Metaworld and Robosuite and find that by using our framework we consistently improve the state-of-the-art of model-free Q-learning methods.

Results

TaskDatasetMetricValueModel
General Reinforcement LearningD4RLAverage Reward81.8KFC
Offline RLD4RLAverage Reward81.8KFC
MuJoCo GamesD4RLAverage Reward81.8KFC

Related Papers

CUDA-L1: Improving CUDA Optimization via Contrastive Reinforcement Learning2025-07-18VisionThink: Smart and Efficient Vision Language Model via Reinforcement Learning2025-07-17Spectral Bellman Method: Unifying Representation and Exploration in RL2025-07-17Aligning Humans and Robots via Reinforcement Learning from Implicit Human Feedback2025-07-17VAR-MATH: Probing True Mathematical Reasoning in Large Language Models via Symbolic Multi-Instance Benchmarks2025-07-17QuestA: Expanding Reasoning Capacity in LLMs via Question Augmentation2025-07-17Inverse Reinforcement Learning Meets Large Language Model Post-Training: Basics, Advances, and Opportunities2025-07-17Autonomous Resource Management in Microservice Systems via Reinforcement Learning2025-07-17