Explainable Landscape Analysis in Automated Algorithm Performance Prediction

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Abstract

Predicting the performance of an optimization algorithm on a new problem instance is crucial in order to select the most appropriate algorithm for solving that problem instance. For this purpose, recent studies learn a supervised machine learning (ML) model using a set of problem landscape features linked to the performance achieved by the optimization algorithm. However, these models are black-box with the only goal of achieving good predictive performance, without providing explanations which landscape features contribute the most to the prediction of the performance achieved by the optimization algorithm. In this study, we investigate the expressiveness of problem landscape features utilized by different supervised ML models in automated algorithm performance prediction. The experimental results point out that the selection of the supervised ML method is crucial, since different supervised ML regression models utilize the problem landscape features differently and there is no common pattern with regard to which landscape features are the most informative.

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Trajanov, R., Dimeski, S., Popovski, M., Korošec, P., & Eftimov, T. (2022). Explainable Landscape Analysis in Automated Algorithm Performance Prediction. In Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics) (Vol. 13224 LNCS, pp. 207–222). Springer Science and Business Media Deutschland GmbH. https://doi.org/10.1007/978-3-031-02462-7_14

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