Effects of resampling techniques on imbalanced data classification : a new under-resampling method
Year of publication: |
2021
|
---|---|
Authors: | Nguyen, Son ; Schumacher, Phyllis ; Olinsky, Alan ; Quinn, John |
Published in: |
Advances in business and management forecasting. - Bingley : Emerald, ZDB-ID 2639569-1. - Vol. 14.2021, p. 51-70
|
Subject: | Cluster centroid | adjusting moving average forecast | imbalanced classification | undersampling | oversampling | binary classification | super- vised learning | SMOTE | Klassifikation | Classification | Prognoseverfahren | Forecasting model | Statistische Methode | Statistical method | Clusteranalyse | Cluster analysis | Theorie | Theory |
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