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A survey of evolutionary algorithms for supervised ensemble learning

Authors :
Cagnini, Henry E. L.
das Dores, S.C.N.
Freitas, Alex A.
Barros, Rodrigo C.
Cagnini, Henry E. L.
das Dores, S.C.N.
Freitas, Alex A.
Barros, Rodrigo C.
Publication Year :
2023

Abstract

This paper presents a comprehensive review of evolutionary algorithms that learn an ensemble of predictive models for supervised machine learning (classification and regression). We propose a detailed four-level taxonomy of studies in this area. The first level of the taxonomy categorizes studies based on which stage of the ensemble learning process is addressed by the evolutionary algorithm: the generation of base models, model selection, or the integration of outputs. The next three levels of the taxonomy further categorize studies based on methods used to address each stage. In addition, we categorize studies according to the main types of objectives optimized by the evolutionary algorithm, the type of base learner used and the type of evolutionary algorithm used. We also discuss controversial topics, like the pros and cons of the selection stage of ensemble learning, and the need for using a diversity measure for the ensemble’s members in the fitness function. Finally, as conclusions, we summarize our findings about patterns in the frequency of use of different methods and suggest several new research directions for evolutionary ensemble learning.

Details

Database :
OAIster
Notes :
application/pdf, A survey of evolutionary algorithms for supervised ensemble learning, English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1372597193
Document Type :
Electronic Resource