5 research outputs found
CrossNorm: Normalization for Off-Policy TD Reinforcement Learning
Off-policy temporal difference (TD) methods are a powerful class of
reinforcement learning (RL) algorithms. Intriguingly, deep off-policy TD
algorithms are not commonly used in combination with feature normalization
techniques, despite positive effects of normalization in other domains. We show
that naive application of existing normalization techniques is indeed not
effective, but that well-designed normalization improves optimization stability
and removes the necessity of target networks. In particular, we introduce a
normalization based on a mixture of on- and off-policy transitions, which we
call cross-normalization. It can be regarded as an extension of batch
normalization that re-centers data for two different distributions, as present
in off-policy learning. Applied to DDPG and TD3, cross-normalization improves
over the state of the art across a range of MuJoCo benchmark tasks