Gray-Box Optimization and the Vertex Coloring Problem

June 06, 2026 ยท Grace Period ยท ๐Ÿ› GECCO 2026

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Authors Johanna Gasse, Antonia Heinen, Hendrik Higl, Timo Kรถtzing arXiv ID 2606.08128 Category cs.NE: Neural & Evolutionary Cross-listed cs.DM Citations 0 Venue GECCO 2026
Abstract
Gray-box optimization is an approach for making some problem-specific information available to the algorithm while still relying on fitness information as the main guide to an optimum. This approach was shown to be beneficial in various combinatorial optimization tasks and neatly captures the continuum between fully black-box algorithms and tailored algorithms. In this work, we discuss different flavors of gray-box algorithms. We show that RLS can find a proper $2$-coloring in a bipartite graph starting from a random $2$-coloring, in an expected time of $\mathcal{O}(n \log n)$. In contrast, when starting from a proper $n$-coloring, the (1+1) EA cannot find such a coloring except when offered additional guiding on plateaus of the search space. Finally, we show the run time for this setting can be much improved by using gray-box operators.
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