Fast approximate bi-objective Pareto sets with quality bounds
We present and empirically characterize a general, parallel, heuristic algorithm for computing small ϵ -Pareto sets. A primary feature of the algorithm is that it maintains and improves an upper bound on the ϵ value throughout the algorithm. The algorithm can be used as part of a decision support to...
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Veröffentlicht in: | Autonomous agents and multi-agent systems 2023-06, Vol.37 (1), Article 5 |
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Format: | Artikel |
Sprache: | eng |
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Zusammenfassung: | We present and empirically characterize a general, parallel, heuristic algorithm for computing small
ϵ
-Pareto sets. A primary feature of the algorithm is that it maintains and improves an upper bound on the
ϵ
value throughout the algorithm. The algorithm can be used as part of a decision support tool for settings in which computing points in objective space is computationally expensive. We use the bi-objective TSP and graph clearing problems as benchmark examples. We characterize the performance of the algorithm through
ϵ
-Pareto set size, upper bound on
ϵ
value provided, true
ϵ
value provided, and parallel speedup achieved. Our results show that the algorithm’s combination of small
ϵ
-Pareto sets and parallel speedup is sufficient to be appealing in settings requiring manual review (i.e., those that have a human in the loop) or real-time solutions. |
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ISSN: | 1387-2532 1573-7454 |
DOI: | 10.1007/s10458-022-09588-0 |