Authors
Thomas Eiter, Tobias Geibinger, Nelson Higuera, Nysret Musliu, Johannes Oetsch, Daria Stepanova
Publication date
2022/7/30
Conference
Proceedings of the International Conference on Principles of Knowledge Representation and Reasoning
Volume
19
Issue
1
Pages
565-569
Description
We present the system ALASPO which implements Adaptive Large-neighbourhood search for Answer Set Programming (ASP) Optimisation. Large-neighbourhood search (LNS) is a meta-heuristic where parts of a solution are destroyed and reconstructed in an attempt to improve an overall objective. ALASPO currently supports the ASP solver clingo, as well as its extensions clingo-dl and clingcon for difference and full integer constraints, and multi-shot solving for an efficient implementation of the LNS loop. Neighbourhoods can be defined in code or declaratively as part of the ASP encoding. While the method underlying ALASPO has been described in previous work, ALASPO also incorporates portfolios for the LNS operators along with self-adaptive selection strategies as a technical novelty. This improves usability considerably at no loss of solution quality, but on the contrary often yields benefits. To demonstrate this, we evaluate ALASPO on different optimisation benchmarks.
Total citations
2023202411
Scholar articles
T Eiter, T Geibinger, N Higuera, N Musliu, J Oetsch… - Proceedings of the International Conference on …, 2022