2019
DOI: 10.3906/elk-1805-159
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Improving undersampling-based ensemble with rotation forest for imbalanced problem

Abstract: As one of the most challenging and attractive issues in pattern recognition and machine learning, the imbalanced problem has attracted increasing attention. For two-class data, imbalanced data are characterized by the size of one class (majority class) being much larger than that of the other class (minority class), which makes the constructed models focus more on the majority class and ignore or even misclassify the examples of the minority class. The undersampling-based ensemble, which learns individual clas… Show more

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Cited by 6 publications
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“…Compared with the random forest algorithm and other classical integrated learning algorithms, the RoF algorithm can generate base classifiers with large differences and a high precision, giving it a better generalization ability. RoF has been widely used in biomedicine [34], pattern recognition [35], geotechnical engineering [36], and environmental science [37]. In this study, the RoF algorithm is applied to estimate the development height of the WFZ in underwater mines.…”
Section: Introductionmentioning
confidence: 99%
“…Compared with the random forest algorithm and other classical integrated learning algorithms, the RoF algorithm can generate base classifiers with large differences and a high precision, giving it a better generalization ability. RoF has been widely used in biomedicine [34], pattern recognition [35], geotechnical engineering [36], and environmental science [37]. In this study, the RoF algorithm is applied to estimate the development height of the WFZ in underwater mines.…”
Section: Introductionmentioning
confidence: 99%