Exploration for Multi-task Reinforcement Learning with Deep Generative Models
Abstract
Exploration in multi-task reinforcement learning is critical in training agents to deduce the underlying MDP. Many of the existing exploration frameworks such as , , Thompson sampling assume a single stationary MDP and are not suitable for system identification in the multi-task setting. We present a novel method to facilitate exploration in multi-task reinforcement learning using deep generative models. We supplement our method with a low dimensional energy model to learn the underlying MDP distribution and provide a resilient and adaptive exploration signal to the agent. We evaluate our method on a new set of environments and provide intuitive interpretation of our results.
Cite
@article{arxiv.1611.09894,
title = {Exploration for Multi-task Reinforcement Learning with Deep Generative Models},
author = {Sai Praveen Bangaru and JS Suhas and Balaraman Ravindran},
journal= {arXiv preprint arXiv:1611.09894},
year = {2016}
}
Comments
9 pages, 5 figures; NIPS Deep Reinforcement Learning Workshop 2016, Barcelona