Deep Variational Reinforcement Learning for POMDPs
Abstract
Many real-world sequential decision making problems are partially observable by nature, and the environment model is typically unknown. Consequently, there is great need for reinforcement learning methods that can tackle such problems given only a stream of rewards and incomplete and noisy observations. In this paper, we propose deep variational reinforcement learning (DVRL), which introduces an inductive bias that allows an agent to learn a generative model of the environment and perform inference in that model to effectively aggregate the available information. We develop an n-step approximation to the evidence lower bound (ELBO), allowing the model to be trained jointly with the policy. This ensures that the latent state representation is suitable for the control task. In experiments on Mountain Hike and flickering Atari we show that our method outperforms previous approaches relying on recurrent neural networks to encode the past.
Cite
Text
Igl et al. "Deep Variational Reinforcement Learning for POMDPs." International Conference on Machine Learning, 2018.Markdown
[Igl et al. "Deep Variational Reinforcement Learning for POMDPs." International Conference on Machine Learning, 2018.](https://mlanthology.org/icml/2018/igl2018icml-deep/)BibTeX
@inproceedings{igl2018icml-deep,
title = {{Deep Variational Reinforcement Learning for POMDPs}},
author = {Igl, Maximilian and Zintgraf, Luisa and Le, Tuan Anh and Wood, Frank and Whiteson, Shimon},
booktitle = {International Conference on Machine Learning},
year = {2018},
pages = {2117-2126},
volume = {80},
url = {https://mlanthology.org/icml/2018/igl2018icml-deep/}
}