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PODNet: A Neural Network for Discovery of Plannable Options

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arxiv 1911.00171 v3 pith:72OCZQMR submitted 2019-11-01 cs.LG cs.AIstat.ML

PODNet: A Neural Network for Discovery of Plannable Options

classification cs.LG cs.AIstat.ML
keywords optionlearningnetworkdiscoverypodnettrajectoriesarchitecturedemonstrated
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Learning from demonstration has been widely studied in machine learning but becomes challenging when the demonstrated trajectories are unstructured and follow different objectives. This short-paper proposes PODNet, Plannable Option Discovery Network, addressing how to segment an unstructured set of demonstrated trajectories for option discovery. This enables learning from demonstration to perform multiple tasks and plan high-level trajectories based on the discovered option labels. PODNet combines a custom categorical variational autoencoder, a recurrent option inference network, option-conditioned policy network, and option dynamics model in an end-to-end learning architecture. Due to the concurrently trained option-conditioned policy network and option dynamics model, the proposed architecture has implications in multi-task and hierarchical learning, explainable and interpretable artificial intelligence, and applications where the agent is required to learn only from observations.

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