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Partition-Guided Distance Saliency: Bridging Decision and Objective Spaces in Many-Objective Optimization
arXiv:2606.30836v1 Announce Type: new Abstract: Explainability in Many-Objective Optimization (MaO) is currently hindered by the escalating complexity of the Pareto front, which renders the relationship between high-dimensional decision variables and objective outcomes increasingly opaque. As the number of objectives exceeds the limits of traditional visualization, decision-makers encounter a ``cognitive drought'' in identifying relevant trade-offs or specifying target regions without a priori k...
arXiv cs.LG
·Cl\'audio L\'ucio do Val Lopes, Fl\'avio Vin\'icius Cruzeiro Martins, Elizabeth Fialho Wanner
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