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Exploring Hierarchy-Aware Inverse Reinforcement Learning
by
Cundy, Chris
, Filan, Daniel
in
Algorithms
/ Bayesian analysis
/ Machine learning
/ Model accuracy
/ Structural hierarchy
2018
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Exploring Hierarchy-Aware Inverse Reinforcement Learning
by
Cundy, Chris
, Filan, Daniel
in
Algorithms
/ Bayesian analysis
/ Machine learning
/ Model accuracy
/ Structural hierarchy
2018
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Paper
Exploring Hierarchy-Aware Inverse Reinforcement Learning
2018
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Overview
We introduce a new generative model for human planning under the Bayesian Inverse Reinforcement Learning (BIRL) framework which takes into account the fact that humans often plan using hierarchical strategies. We describe the Bayesian Inverse Hierarchical RL (BIHRL) algorithm for inferring the values of hierarchical planners, and use an illustrative toy model to show that BIHRL retains accuracy where standard BIRL fails. Furthermore, BIHRL is able to accurately predict the goals of `Wikispeedia' game players, with inclusion of hierarchical structure in the model resulting in a large boost in accuracy. We show that BIHRL is able to significantly outperform BIRL even when we only have a weak prior on the hierarchical structure of the plans available to the agent, and discuss the significant challenges that remain for scaling up this framework to more realistic settings.
Publisher
Cornell University Library, arXiv.org
Subject
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