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Robust and Efficient Transfer Learning with Hidden Parameter Markov Decision Processes

2017-12-01NeurIPS 2017Code Available0· sign in to hype

Taylor W. Killian, Samuel Daulton, George Konidaris, Finale Doshi-Velez

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Abstract

We introduce a new formulation of the Hidden Parameter Markov Decision Process (HiP-MDP), a framework for modeling families of related tasks using low-dimensional latent embeddings. Our new framework correctly models the joint uncertainty in the latent parameters and the state space. We also replace the original Gaussian Process-based model with a Bayesian Neural Network, enabling more scalable inference. Thus, we expand the scope of the HiP-MDP to applications with higher dimensions and more complex dynamics.

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