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A Multiple Resampling Method for Learning from Imbalanced Data Sets
1K
Citations
15
References
2004
Year
EngineeringMachine LearningText MiningClassification MethodInformation RetrievalData ScienceData MiningPattern RecognitionClass ImbalanceClass‐imbalance ProblemResampling ApproachMultiple Classifier SystemStatisticsAutomatic ClassificationPredictive AnalyticsKnowledge DiscoveryImbalanced SubsetsMultiple Resampling MethodData Classification
Resampling methods are commonly used for dealing with the class‐imbalance problem. Their advantage over other methods is that they are external and thus, easily transportable. Although such approaches can be very simple to implement, tuning them most effectively is not an easy task. In particular, it is unclear whether oversampling is more effective than undersampling and which oversampling or undersampling rate should be used. This paper presents an experimental study of these questions and concludes that combining different expressions of the resampling approach is an effective solution to the tuning problem. The proposed combination scheme is evaluated on imbalanced subsets of the Reuters‐21578 text collection and is shown to be quite effective for these problems.
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