Feature Selection for Data-driven Explainable Optimization

Aigner KM, Goerigk M, Hartisch M, Liers F, Miehlich A, Rösel F (2025)


Publication Language: English

Publication Status: Submitted

Publication Type: Unpublished / Preprint

Future Publication Type: Journal article

Publication year: 2025

URI: https://opus4.kobv.de/opus4-trr154/frontdoor/index/index/docId/586

DOI: 10.48550/arXiv.2504.12184

Open Access Link: https://opus4.kobv.de/opus4-trr154/frontdoor/index/index/docId/586

Abstract

Mathematical optimization, although often leading to NP-hard models, is now capable of solving even large-scale instances within reasonable time. However, the primary focus is often placed solely on optimality. This implies that while obtained solutions are globally optimal, they are frequently not comprehensible to humans, in particular when obtained by black-box routines. In contrast, explainability is a standard requirement for results in Artificial Intelligence, but it is rarely considered in optimization yet. There are only a few studies that aim to find solutions that are both of high quality and explainable. In recent work, explainability for optimization was defined in a data-driven manner: a solution is considered explainable if it closely resembles solutions that have been used in the past under similar circumstances. To this end, it is crucial to identify a preferably small subset of features from a presumably large set that can be used to explain a solution. In mathematical optimization, feature selection has received little attention yet. In this work, we formally define the feature selection problem for explainable optimization and prove that its decision version is NP-complete. We introduce mathematical models for optimized feature selection. As their global solution requires significant computation time with modern mixed-integer linear solvers, we employ local heuristics. Our computational study using data that reflect real-world scenarios demonstrates that the problem can be solved practically efficiently for instances of reasonable size.

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How to cite

APA:

Aigner, K.-M., Goerigk, M., Hartisch, M., Liers, F., Miehlich, A., & Rösel, F. (2025). Feature Selection for Data-driven Explainable Optimization. (Unpublished, Submitted).

MLA:

Aigner, Kevin-Martin, et al. Feature Selection for Data-driven Explainable Optimization. Unpublished, Submitted. 2025.

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