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arxiv: 1905.12006 · v1 · pith:75CFKR3Znew · submitted 2019-05-28 · 💻 cs.LG · cs.AI· stat.ML

Learning Portable Representations for High-Level Planning

classification 💻 cs.LG cs.AIstat.ML
keywords portableagentlearninglearnsplanningrepresentationrepresentationsrules
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We present a framework for autonomously learning a portable representation that describes a collection of low-level continuous environments. We show that these abstract representations can be learned in a task-independent egocentric space specific to the agent that, when grounded with problem-specific information, are provably sufficient for planning. We demonstrate transfer in two different domains, where an agent learns a portable, task-independent symbolic vocabulary, as well as rules expressed in that vocabulary, and then learns to instantiate those rules on a per-task basis. This reduces the number of samples required to learn a representation of a new task.

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