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InfoGAIL: Interpretable Imitation Learning from Visual Demonstrations
[article]
2017
arXiv
pre-print
The goal of imitation learning is to mimic expert behavior without access to an explicit reward signal. Expert demonstrations provided by humans, however, often show significant variability due to latent factors that are typically not explicitly modeled. In this paper, we propose a new algorithm that can infer the latent structure of expert demonstrations in an unsupervised way. Our method, built on top of Generative Adversarial Imitation Learning, can not only imitate complex behaviors, but
arXiv:1703.08840v2
fatcat:pnvgdi5syvc4djno32b2gnhjoa