Multi-class and feature selection extensions of Roughly Balanced Bagging for imbalanced data

被引:0
|
作者
Mateusz Lango
Jerzy Stefanowski
机构
[1] Poznań University of Technology,Institute of Computing Science
关键词
Class imbalance; Roughly balanced bagging; Types of minority examples; Feature selection; Multiple imbalanced classes;
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学科分类号
摘要
Roughly Balanced Bagging is one of the most efficient ensembles specialized for class imbalanced data. In this paper, we study its basic properties that may influence its good classification performance. We experimentally analyze them with respect to bootstrap construction, deciding on the number of component classifiers, their diversity, and ability to deal with the most difficult types of the minority examples. Then, we introduce two generalizations of this ensemble for dealing with a higher number of attributes and for adapting it to handle multiple minority classes. Experiments with synthetic and real life data confirm usefulness of both proposals.
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页码:97 / 127
页数:30
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