Return to Tradition: Learning Reliable Heuristics with Classical Machine Learning
| dc.contributor.author | Chen, Dillon Z. | en |
| dc.contributor.author | Trevizan, Felipe | en |
| dc.contributor.author | Thiébaux, Sylvie | en |
| dc.date.accessioned | 2026-03-02T14:42:06Z | |
| dc.date.available | 2026-03-02T14:42:06Z | |
| dc.date.issued | 2024-05-30 | en |
| dc.description.abstract | Current approaches for learning for planning have yet to achieve competitive performance against classical planners in several domains, and have poor overall performance. In this work, we construct novel graph representations of lifted planning tasks and use the WL algorithm to generate features from them. These features are used with classical machine learning methods which have up to 2 orders of magnitude fewer parameters and train up to 3 orders of magnitude faster than the state-of-the-art deep learning for planning models. Our novel approach, WL-GOOSE, reliably learns heuristics from scratch and outperforms the hFF heuristic in a fair competition setting. It also outperforms or ties with LAMA on 4 out of 10 domains on coverage and 7 out of 10 domains on plan quality. WL-GOOSE is the first learning for planning model which achieves these feats. Furthermore, we study the connections between our novel WL feature generation method, previous theoretically flavoured learning architectures, and Description Logic Features for planning. | en |
| dc.description.sponsorship | Many thanks must go to Simon Ståhlberg for training and evaluating Muninn on GPUs with GBFS. This work was supported by Australian Research Council grant DP220103815, by the Artificial and Natural Intelligence Toulouse Institute (ANITI) under the grant agreement ANR-19-PI3A-000, and by the European Union's Horizon Europe Research and Innovation program under the grant agreement TUPLES No. 101070149. | en |
| dc.description.status | Peer-reviewed | en |
| dc.format.extent | 9 | en |
| dc.identifier.isbn | 9781577358893 | en |
| dc.identifier.issn | 2334-0835 | en |
| dc.identifier.scopus | 85195908830 | en |
| dc.identifier.uri | https://hdl.handle.net/1885/733806992 | |
| dc.language.iso | en | en |
| dc.publisher | Association for the Advancement of Artificial Intelligence | en |
| dc.relation.ispartof | Proceedings of the 34th International Conference on Automated Planning and Scheduling, ICAPS 2024 | en |
| dc.relation.ispartofseries | 34th International Conference on Automated Planning and Scheduling, ICAPS 2024 | en |
| dc.relation.ispartofseries | Proceedings International Conference on Automated Planning and Scheduling, ICAPS | en |
| dc.rights | Publisher Copyright: Copyright © 2024, Association for the Advancement of Artificial Intelligence (www.aaai.org). All rights reserved. | en |
| dc.title | Return to Tradition: Learning Reliable Heuristics with Classical Machine Learning | en |
| dc.type | Conference paper | en |
| dspace.entity.type | Publication | en |
| local.bibliographicCitation.lastpage | 76 | en |
| local.bibliographicCitation.startpage | 68 | en |
| local.contributor.affiliation | Chen, Dillon Z.; University of Toulouse III | en |
| local.contributor.affiliation | Trevizan, Felipe; School of Computing, ANU College of Systems and Society, The Australian National University | en |
| local.contributor.affiliation | Thiébaux, Sylvie; University of Toulouse III | en |
| local.identifier.doi | 10.1609/icaps.v34i1.31462 | en |
| local.identifier.essn | 2334-0843 | en |
| local.identifier.pure | 35583258-c5c7-49fe-8fd4-7b1ba408aa8f | en |
| local.identifier.url | https://www.scopus.com/pages/publications/85195908830 | en |
| local.type.status | Published | en |