Benchmarking Batch Deep Reinforcement Learning Algorithms
Scott Fujimoto
and
Edoardo Conti
and
Mohammad Ghavamzadeh
and
Joelle Pineau
arXiv e-Print archive - 2019 via Local arXiv
Keywords:
cs.LG, cs.AI, stat.ML
First published: 2019/10/03 (5 years ago) Abstract: Widely-used deep reinforcement learning algorithms have been shown to fail in
the batch setting--learning from a fixed data set without interaction with the
environment. Following this result, there have been several papers showing
reasonable performances under a variety of environments and batch settings. In
this paper, we benchmark the performance of recent off-policy and batch
reinforcement learning algorithms under unified settings on the Atari domain,
with data generated by a single partially-trained behavioral policy. We find
that under these conditions, many of these algorithms underperform DQN trained
online with the same amount of data, as well as the partially-trained
behavioral policy. To introduce a strong baseline, we adapt the
Batch-Constrained Q-learning algorithm to a discrete-action setting, and show
it outperforms all existing algorithms at this task.