Learning Generalised Policies for Numeric Planning.
Loading...
Date
Authors
Wang, Ryan Xiao
Thiébaux, Sylvie
Journal Title
Journal ISSN
Volume Title
Publisher
Access Statement
Abstract
We extend Action Schema Networks (ASNets) to learn gen-eralised policies for numeric planning, which features quan-titative numeric state variables, preconditions and effects. Wepropose a neural network architecture that can reason aboutthe numeric variables both directly and in context of othervariables. We also develop a dynamic exploration algorithmfor more efficient training, by better balancing the explo-ration versus learning tradeoff to account for the greater com-putational demand of numeric teacher planners. Experimen-tally, we find that the learned generalised policies are capableof outperforming traditional numeric planners on some do-mains, and the dynamic exploration algorithm to be on aver-age much faster at learning effective generalised policies thanthe original ASNets training algorithm
Description
Keywords
Citation
Collections
Source
Type
Book Title
ICAPS
Entity type
Publication