Code accompanying the paper:
Plannable Approximations to MDP Homomorphisms: Equivariance under Actions
Elise van der Pol, Thomas Kipf, Frans A. Oliehoek, Max Welling.
http://www.ifaamas.org/Proceedings/aamas2020/pdfs/p1431.pdf
Abstract: This work exploits action equivariance for representation learning in reinforcement learning. Equivariance under actions states that transitions in the input space are mirrored by equivalent transitions in latent space, while the map and transition functions should also commute. We introduce a contrastive loss function that enforces action equivariance on the learned representations. We prove that when our loss is zero, we have a homomorphism of a deterministic Markov Decision Process (MDP). Learning equivariant maps leads to structured latent spaces, allowing us to build a model on which we plan through value iteration. We show experimentally that for deterministic MDPs, the optimal policy in the abstract MDP can be successfully lifted to the original MDP. Moreover, the approach easily adapts to changes in the goal states. Empirically, we show that in such MDPs, we obtain better representations in fewer epochs compared to representation learning approaches using reconstructions, while generalizing better to new goals than model-free approaches.
- conda env create -f prae.yml
- source activate prae
- pip install -e .
- cd notebooks
- jupyter notebook
If you use this code in your own work, please cite our paper:
@inproceedings{van2020plannable,
title={Plannable Approximations to {MDP} Homomorphisms: Equivariance under Actions},
author={van der Pol, Elise and Kipf, Thomas and Oliehoek, Frans A. and Welling, Max},
booktitle={International Conference on Autonomous Agents and MultiAgent Systems},
year={2020}
}
The Robert Bosch GmbH is acknowledged for financial support.