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Safe Exploration

Safe Exploration is an approach to collect ground truth data by safely interacting with the environment.

Source: Chance-Constrained Trajectory Optimization for Safe Exploration and Learning of Nonlinear Systems

Papers

Showing 110 of 135 papers

TitleStatusHype
Confidence-Guided Human-AI Collaboration: Reinforcement Learning with Distributional Proxy Value Propagation for Autonomous DrivingCode0
SLAC: Simulation-Pretrained Latent Action Space for Whole-Body Real-World RL0
Bresa: Bio-inspired Reflexive Safe Reinforcement Learning for Contact-Rich Robotic Tasks0
Safe exploration in reproducing kernel Hilbert spaces0
Safety Representations for Safer Policy Learning0
Learning to explore when mistakes are not allowed0
ConRFT: A Reinforced Fine-tuning Method for VLA Models via Consistency PolicyCode3
Learning-Enhanced Safeguard Control for High-Relative-Degree Systems: Robust Optimization under Disturbances and Faults0
Safe Bayesian Optimization for the Control of High-Dimensional Embodied Systems0
ActSafe: Active Exploration with Safety Constraints for Reinforcement Learning0
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