Proceedings of the Genetic and Evolutionary Computation Conference | 2021

The impact of hyper-parameter tuning for landscape-aware performance regression and algorithm selection

 
 
 
 

Abstract


Automated algorithm selection and configuration methods that build on exploratory landscape analysis (ELA) are becoming very popular in Evolutionary Computation. However, despite a significantly growing number of applications, the underlying machine learning models are often chosen in an ad-hoc manner. We show in this work that three classical regression methods are able to achieve meaningful results for ELA-based algorithm selection. For those three models - random forests, decision trees, and bagging decision trees - the quality of the regression models is highly impacted by the chosen hyper-parameters. This has significant effects also on the quality of the algorithm selectors that are built on top of these regressions. By comparing a total number of 30 different models, each coupled with 2 complementary regression strategies, we derive guidelines for the tuning of the regression models and provide general recommendations for a more systematic use of classical machine learning models in landscape-aware algorithm selection. We point out that a choice of the machine learning model merits to be carefully undertaken and further investigated.

Volume None
Pages None
DOI 10.1145/3449639.3459406
Language English
Journal Proceedings of the Genetic and Evolutionary Computation Conference

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