แนวคิดหลัก
Introducing L1-MBRL for robust reinforcement learning with model-based algorithms.
สถิติ
MBRL algorithms learn a model of the transition function using data.
MBRL algorithms offer superior sample complexity compared to MFRL.
The proposed switching law generates approximate control-affine models.
คำพูด
"Our approach generates a series of approximate control-affine models of the learned transition function."
"MBRL algorithms with L1 augmentation exhibit enhanced performance and sample efficiency."