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001-es BibID:BIBFORM109631
035-os BibID:(Cikkazonosító)2333 (WoS)000941569000001 (Scopus)85148971242 (Pubmed)36850931
Első szerző:Szeghalmy Szilvia (programtervező matematikus)
Cím:A Comparative Study of the Use of Stratified Cross-Validation and Distribution-Balanced Stratified Cross-Validation in Imbalanced Learning / Szilvia Szeghalmy, Attila Fazekas
Dátum:2023
ISSN:1424-8220
Megjegyzések:Nowadays, the solution to many practical problems relies on machine learning tools. However, compiling the appropriate training data set for real-world classification problems is challenging because collecting the right amount of data for each class is often difficult or even impossible. In such cases, we can easily face the problem of imbalanced learning. There are many methods in the literature for solving the imbalanced learning problem, so it has become a serious question how to compare the performance of the imbalanced learning methods. Inadequate validation techniques can provide misleading results (e.g., due to data shift), which leads to the development of methods designed for imbalanced data sets, such as stratified cross-validation (SCV) and distribution optimally balanced SCV (DOB-SCV). Previous studies have shown that higher classification performance scores (AUC) can be achieved on imbalanced data sets using DOB-SCV instead of SCV. We investigated the effect of the oversamplers on this difference. The study was conducted on 420 data sets, involving several sampling methods and the DTree, kNN, SVM, and MLP classifiers. We point out that DOB-SCV often provides a little higher F1 and AUC values for classification combined with sampling. However, the results also prove that the selection of the sampler?classifier pair is more important for the classification performance than the choice between the DOB-SCV and the SCV techniques.
Tárgyszavak:Műszaki tudományok Informatikai tudományok idegen nyelvű folyóiratközlemény külföldi lapban
folyóiratcikk
imbalanced learning
cross validation
SCV
DOB-SCV
Megjelenés:Sensors. - 23 : 4 (2023), p. 1-27. -
További szerzők:Fazekas Attila (1968-) (matematikus, informatikus)
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