Multi-Objective Hyperparameter Optimization in Machine Learning – An Overview

Florian Karl, Tobias Pielok, Julia Moosbauer, Florian Pfisterer, Stefan Coors, Martin Binder, Lennart Schneider, Janek Thomas, Jakob Richter, Michel Lang, E.C. Garrido-Merchán, Juergen Branke, B. Bischl
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Abstract

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. This is often neglected in practice, due to a lack of knowledge and readily available software implementations for multi-objective hyperparameter optimization. In this work, we introduce the reader to the basics of multi-objective hyperparameter optimization and motivate its usefulness in applied ML. Furthermore, we provide an extensive survey of existing optimization strategies, both from the domain of evolutionary algorithms and Bayesian optimization. We illustrate the utility of MOO in several specific ML applications, considering objectives such as operating conditions, prediction time, sparseness, fairness, interpretability and robustness.
机器学习中的多目标超参数优化综述
超参数优化构成了典型的现代机器学习工作流程的很大一部分。这是因为机器学习方法和相应的预处理步骤通常只有在超参数适当调优时才能产生最佳性能。但在许多应用中,我们不仅对优化机器学习管道的预测准确性感兴趣;在确定最优配置时,必须考虑额外的度量或约束,从而导致多目标优化问题。由于缺乏多目标超参数优化的知识和现成的软件实现,这在实践中经常被忽视。在这项工作中,我们向读者介绍了多目标超参数优化的基础知识,并激发了它在应用ML中的实用性。此外,我们从进化算法和贝叶斯优化的领域对现有的优化策略进行了广泛的调查。考虑到操作条件、预测时间、稀疏性、公平性、可解释性和鲁棒性等目标,我们说明了MOO在几个特定ML应用中的效用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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