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Action schema networks: Generalised policies with deep learning

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Authors

Toyer, Sam
W. Trevizan, Felipe
Thiebaux, Sylvie
Xie, Lexing

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Publisher

AAAI Press

Abstract

In this paper, we introduce the Action Schema Network (ASNet): a neural network architecture for learning generalised policies for probabilistic planning problems. By mimicking the relational structure of planning problems, ASNets are able to adopt a weight sharing scheme which allows the network to be applied to any problem from a given planning domain. This allows the cost of training the network to be amortised over all problems in that domain. Further, we propose a training method which balances exploration and supervised training on small problems to produce a policy which remains robust when evaluated on larger problems. In experiments, we show that ASNet's learning capability allows it to significantly outperform traditional non-learning planners in several challenging domains.

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Source

32nd AAAI Conference on Artificial Intelligence, AAAI 2018

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Free Access via publisher website

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Restricted until

2099-12-31

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