Planning in factored state and action spaces with learned binarized neural network transition models

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Abstract

In this paper, we leverage the efficiency of Binarized Neural Networks (BNNs) to learn complex state transition models of planning domains with discretized factored state and action spaces. In order to directly exploit this transition structure for planning, we present two novel compilations of the learned factored planning problem with BNNs based on reductions to Boolean Satisfiability (FD-SAT-Plan) as well as Binary Linear Programming (FD-BLP-Plan). Experimentally, we show the effectiveness of learning complex transition models with BNNs, and test the runtime efficiency of both encodings on the learned factored planning problem. After this initial investigation, we present an incremental constraint generation algorithm based on generalized landmark constraints to improve the planning accuracy of our encodings. Finally, we show how to extend the best performing encoding (FD-BLP-Plan+) beyond goals to handle factored planning problems with rewards.

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APA

Say, B., & Sanner, S. (2018). Planning in factored state and action spaces with learned binarized neural network transition models. In IJCAI International Joint Conference on Artificial Intelligence (Vol. 2018-July, pp. 4815–4821). International Joint Conferences on Artificial Intelligence. https://doi.org/10.24963/ijcai.2018/669

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