Assessing Generalization in Deep Reinforcement Learning

Packer, Charles, Gao, Katelyn, Kos, Jernej, Krähenbühl, Philipp, Koltun, Vladlen, Song, Dawn

arXiv.org Artificial Intelligence 

Deep reinforcement learning (RL) has achieved breakthrough results on many tasks, but has been shown to be sensitive to system changes at test time. As a result, building deep RL agents that generalize has become an active research area. Our aim is to catalyze and streamline community-wide progress on this problem by providing the first benchmark and a common experimental protocol for investigating generalization in RL. Our benchmark contains a diverse set of environments and our evaluation methodology covers both in-distribution and out-of-distribution generalization. To provide a set of baselines for future research, we conduct a systematic evaluation of deep RL algorithms, including those that specifically tackle the problem of generalization.

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