Please use this identifier to cite or link to this item: http://hdl.handle.net/1942/36205
Title: A survey on multi-objective hyperparameter optimization algorithms for Machine Learning
Authors: MORALES HERNANDEZ, Alejandro 
VAN NIEUWENHUYSE, Inneke 
ROJAS GONZALEZ, Sebastian 
Issue Date: 2021
Abstract: Hyperparameter optimization (HPO) is a necessary step to ensure the best possible performance of Machine Learning (ML) algorithms. Several methods have been developed to perform HPO; most of these are focused on optimizing one performance measure (usually an error-based measure), and the literature on such single-objective HPO problems is vast. Recently, though, algorithms have appeared which focus on optimizing multiple conflicting objectives simultaneously. This article presents a systematic survey of the literature published between 2014 and 2020 on multi-objective HPO algorithms, distinguishing between metaheuristic-based algorithms, metamodel-based algorithms and approaches using a mixture of both. We also discuss the quality metrics used to compare multi-objective HPO procedures, and present future research directions.
Keywords: hyperparameter optimization;multi-objective optimization;metamodel;meta-heuristic;machine learning
Document URI: http://hdl.handle.net/1942/36205
Category: O
Type: Preprint
Appears in Collections:Research publications

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