DocumentCode
3353310
Title
MSMOTE: Improving Classification Performance When Training Data is Imbalanced
Author
Hu, Shengguo ; Liang, Yanfeng ; Ma, Lintao ; He, Ying
Author_Institution
Etsong Tobacco (Group) Ltd., Qingdao, China
Volume
2
fYear
2009
fDate
28-30 Oct. 2009
Firstpage
13
Lastpage
17
Abstract
Learning from data sets that contain very few instances of the minority class usually produces biased classifiers that have a higher predictive accuracy over the majority class, but poorer predictive accuracy over the minority class. SMOTE (synthetic minority over-sampling technique) is specifically designed for learning from imbalanced data sets. This paper presents a modified approach (MSMOTE) for learning from imbalanced data sets, based on the SMOTE algorithm. MSMOTE not only considers the distribution of minority class samples, but also eliminates noise samples by adaptive mediation. The combination of MSMOTE and AdaBoost are applied to several highly and moderately imbalanced data sets. The experimental results show that the prediction performance of MSMOTE is better than SMOTEBoost in the minority class and F-values are also improved.
Keywords
Ada; data mining; learning (artificial intelligence); pattern classification; sampling methods; AdaBoost; MSMOTE; biased classifiers; classification performance; learning; modified synthetic minority over-sampling technique; Accuracy; Boosting; Classification algorithms; Computer science; Data engineering; Intrusion detection; Machine learning algorithms; Oceans; Sampling methods; Training data; AdaBoost; SMOTE; SMOTEBoost; imbalanced data; over-sampling; samples groups;
fLanguage
English
Publisher
ieee
Conference_Titel
Computer Science and Engineering, 2009. WCSE '09. Second International Workshop on
Conference_Location
Qingdao
Print_ISBN
978-0-7695-3881-5
Type
conf
DOI
10.1109/WCSE.2009.756
Filename
5403368
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