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Generalization to New Actions in Reinforcement Learning

2020-11-03 18:58:39
Ayush Jain, Andrew Szot, Joseph J. Lim

Abstract

A fundamental trait of intelligence is the ability to achieve goals in the face of novel circumstances, such as making decisions from new action choices. However, standard reinforcement learning assumes a fixed set of actions and requires expensive retraining when given a new action set. To make learning agents more adaptable, we introduce the problem of zero-shot generalization to new actions. We propose a two-stage framework where the agent first infers action representations from action information acquired separately from the task. A policy flexible to varying action sets is then trained with generalization objectives. We benchmark generalization on sequential tasks, such as selecting from an unseen tool-set to solve physical reasoning puzzles and stacking towers with novel 3D shapes. Videos and code are available at this https URL

Abstract (translated)

URL

https://arxiv.org/abs/2011.01928

PDF

https://arxiv.org/pdf/2011.01928.pdf


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