Planning with Learned Binarized Neural Networks Benchmarks for MaxSAT Evaluation 2021

08/02/2021
by   Buser Say, et al.
0

This document provides a brief introduction to learned automated planning problem where the state transition function is in the form of a binarized neural network (BNN), presents a general MaxSAT encoding for this problem, and describes the four domains, namely: Navigation, Inventory Control, System Administrator and Cellda, that are submitted as benchmarks for MaxSAT Evaluation 2021.

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