2024
DOI: 10.1609/aaai.v38i19.30081
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A Framework for Data-Driven Explainability in Mathematical Optimization

Kevin-Martin Aigner,
Marc Goerigk,
Michael Hartisch
et al.

Abstract: Advancements in mathematical programming have made it possible to efficiently tackle large-scale real-world problems that were deemed intractable just a few decades ago. However, provably optimal solutions may not be accepted due to the perception of optimization software as a black box. Although well understood by scientists, this lacks easy accessibility for practitioners. Hence, we advocate for introducing the explainability of a solution as another evaluation criterion, next to its objective value, which e… Show more

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