Reports on the 2015 AAAI Workshop Series
Stefano V. Albrecht, J. Christopher Beck, et al.
AAAI 2015
Symmetry-based state space pruning techniques have proved to greatly improve heuristic search based classical planners. Similarly, abstraction heuristics in general and pattern databases in particular are key ingredients of such planners. However, only little work has dealt with how the abstraction heuristics behave under symmetries. In this work, we investigate the symmetry properties of the popular canonical pattern databases heuristic. Exploiting structural symmetries, we strengthen the canonical pattern databases by adding symmetric pattern databases, making the resulting heuristic invariant under structural symmetry, thus making it especially attractive for symmetry-based pruning search methods. Further, we prove that this heuristic is at least as informative as using symmetric lookups over the original heuristic. An experimental evaluation confirms these theoretical results.
Stefano V. Albrecht, J. Christopher Beck, et al.
AAAI 2015
Daniel Fišer, Daniel Gnad, et al.
IJCAI 2021
Carlos Hernández Ulloa, Adi Botea, et al.
IJCAI 2017
Masataro Asai, Christian Muise
IJCAI 2020