Multi-Objective Hyperparameter Optimization in Machine Learning – An Overview

Hyperparameter optimization constitutes a large part of typical modern machine learning workflows. This arises from the fact that machine learning methods and corresponding preprocessing steps often only yield optimal performance when hyperparameters are properly tuned. But in many applications, we are not only interested in optimizing ML pipelines solely for predictive accuracy; additional metrics or constraints must be considered when determining an optimal configuration, resulting in a multi-objective optimization problem.

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Florian Karl, Tobias Pielok, Julia Moosbauer, Florian Pfisterer, Stefan Coors, Martin Binder, Lennart Schneider, Janek Thomas, Jakob Richter, Michel Lang, Eduardo C. Garrido-Merchán, Jürgen Branke, Bernd Bischl (2024). Dataset: Multi-Objective Hyperparameter Optimization in Machine Learning – An Overview. https://doi.org/10.57702/1mj5kfb7

DOI retrieved: December 16, 2024

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Created December 16, 2024
Last update December 16, 2024
Defined In https://doi.org/10.1145/3610536
Author Florian Karl
More Authors
Tobias Pielok
Julia Moosbauer
Florian Pfisterer
Stefan Coors
Martin Binder
Lennart Schneider
Janek Thomas
Jakob Richter
Michel Lang
Eduardo C. Garrido-Merchán
Jürgen Branke
Bernd Bischl