Explainable Landscape Analysis in Automated Algorithm Performance Prediction

R. Trajanov, Stefan Dimeski, Martin Popovski, P. Korošec, T. Eftimov
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引用次数: 6

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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自动算法性能预测中的可解释景观分析
预测优化算法在新问题实例上的性能对于选择最合适的算法来解决该问题实例至关重要。为此,最近的研究使用一组与优化算法实现的性能相关的问题景观特征来学习有监督的机器学习(ML)模型。然而,这些模型都是黑盒子,其唯一目标是实现良好的预测性能,而没有提供哪些景观特征对优化算法实现的性能预测贡献最大的解释。在这项研究中,我们研究了不同的监督机器学习模型在自动算法性能预测中利用的问题景观特征的表达性。实验结果指出,监督式机器学习方法的选择是至关重要的,因为不同的监督式机器学习回归模型对问题景观特征的利用方式不同,并且在哪些景观特征信息量最大方面没有共同的模式。
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Applications of Evolutionary Computation: 26th European Conference, EvoApplications 2023, Held as Part of EvoStar 2023, Brno, Czech Republic, April 12–14, 2023, Proceedings Optimising Communication Overhead in Federated Learning Using NSGA-II The Asteroid Routing Problem: A Benchmark for Expensive Black-Box Permutation Optimization Explainable Landscape Analysis in Automated Algorithm Performance Prediction Search Trajectories Networks of Multiobjective Evolutionary Algorithms
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