`

Timezone: »

 
Poster
MDP Homomorphic Networks: Group Symmetries in Reinforcement Learning
Elise van der Pol · Daniel E Worrall · Herke van Hoof · Frans Oliehoek · Max Welling

Tue Dec 08 09:00 AM -- 11:00 AM (PST) @ Poster Session 1 #550

This paper introduces MDP homomorphic networks for deep reinforcement learning. MDP homomorphic networks are neural networks that are equivariant under symmetries in the joint state-action space of an MDP. Current approaches to deep reinforcement learning do not usually exploit knowledge about such structure. By building this prior knowledge into policy and value networks using an equivariance constraint, we can reduce the size of the solution space. We specifically focus on group-structured symmetries (invertible transformations). Additionally, we introduce an easy method for constructing equivariant network layers numerically, so the system designer need not solve the constraints by hand, as is typically done. We construct MDP homomorphic MLPs and CNNs that are equivariant under either a group of reflections or rotations. We show that such networks converge faster than unstructured baselines on CartPole, a grid world and Pong.

Author Information

Elise van der Pol (University of Amsterdam)
Daniel E Worrall (Qualcomm)
Herke van Hoof (University of Amsterdam)
Frans Oliehoek (TU Delft)
Max Welling (University of Amsterdam / Qualcomm AI Research)

More from the Same Authors