Exploring the performance of resampling strategies for the class imbalance problem

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comunitat-uji-handle2:10234/7038
comunitat-uji-handle3:10234/8634
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Title
Exploring the performance of resampling strategies for the class imbalance problemDate
2010ISSN
0302-9743Publisher
Springer VerlagAbstract
The present paper studies the influence of two distinct factors on the performance of some resampling strategies for handling imbalanced data sets. In particular, we focus on the nature of the classifier used, along ... [+]
The present paper studies the influence of two distinct factors on the performance of some resampling strategies for handling imbalanced data sets. In particular, we focus on the nature of the classifier used, along with the ratio between minority and majority classes. Experiments using eight different classifiers show that the most significant differences are for data sets with low or moderate imbalance: over-sampling clearly appears as better than under-sampling for local classifiers, whereas some under-sampling strategies outperform over-sampling when employing classifiers with global learning. [-]
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Lecture notes in computer science (2010), vol. 6096, p. 541-549Type
info:eu-repo/semantics/articleRights
© Springer Verlag
info:eu-repo/semantics/openAccess
info:eu-repo/semantics/openAccess
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