Create k-fold Cross Validation with Undersampling for highly imbalanced Dataset

Dear Community,
I am not sure how to implement the following requirement. When I use undersampling for my supervised Machine Learning Algorithm, how can I assure that the k-fold corresponds to the distribution of the original dataset. The performace metric (e.g. PR AUC) shall refer to the original distribution and not to the distribution of the undersampled set.
It does not make sense to solely perform k-fold cross validation on the entire undersampled dataset.
Your help is highly appreciated!

Antworten (1)

Hi Dario,
It is my understanding that you want k-folds (cross-validation) to preserve the imbalanced distribution of original dataset. The solution is stratified k-fold cross-validation.
  • Use cvpartition function and refer to cvpartition documentation for more information.
c = cvpartition(group,'KFold',k,'Stratify',stratifyOption)
  • You can also try following file exchange documents as a drop-in replacement to cvpartition:
  1. Distribution-balanced stratified cross-validation
  2. Stratified cross-validation for multi-label datasets

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R2020a

Gefragt:

am 4 Aug. 2020

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