A dynamic ensemble selection method for bank telemarketing sales prediction

2022 ◽  
Vol 139 ◽  
pp. 368-382
Author(s):  
Yi Feng ◽  
Yunqiang Yin ◽  
Dujuan Wang ◽  
Lalitha Dhamotharan
Author(s):  
Leila Maria Vriesmann ◽  
Alceu De Souza Britto <suffix>Jr.</suffix> ◽  
Luiz Eduardo Soares De Oliveira ◽  
Robert Sabourin ◽  
Albert Houng Ren Ko

Author(s):  
Regis Antonio S. Albuquerque ◽  
Albert F. Josua Costa ◽  
Eulanda Miranda dos Santos ◽  
Robert Sabourin ◽  
Rafael Giusti

Author(s):  
Rafael M. O. Cruz ◽  
Mariana A. Souza ◽  
Robert Sabourin ◽  
George D. C. Cavalcanti

Class imbalance refers to classification problems in which many more instances are available for certain classes than for others. Such imbalanced datasets require special attention because traditional classifiers generally favor the majority class which has a large number of instances. Ensemble of classifiers has been reported to yield promising results. However, the majority of ensemble methods applied to imbalance learning are static ones. Moreover, they only deal with binary imbalanced problems. Hence, this paper presents an empirical analysis of Dynamic Selection techniques and data preprocessing methods for dealing with multi-class imbalanced problems. We considered five variations of preprocessing methods and 14 Dynamic Selection schemes. Our experiments conducted on 26 multi-class imbalanced problems show that the dynamic ensemble improves the AUC and the [Formula: see text]-mean as compared to the static ensemble. Moreover, data preprocessing plays an important role in such cases.


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