 imbalanced-ensemble
 imbalanced-ensemble 
 Ensemble learner
 A library that enables quick and efficient ensemble learning on imbalanced datasets through various over-/under-sampling methods and algorithms
🛠️ Class-imbalanced Ensemble Learning Toolbox. | 类别不平衡/长尾机器学习库
340 stars
 9 watching
 52 forks
 
Language: Python 
last commit: over 1 year ago 
Linked from   1 awesome list  
  class-imbalanceclassificationdata-miningdata-scienceensembleensemble-imbalanced-learningensemble-learningensemble-modelimbalanced-classificationimbalanced-dataimbalanced-learninglong-tailmachine-learningmulti-class-classificationpythonpython3scikit-learnsklearn 
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