How do you deal with unbalanced classification problem?
Réponses aux questions d'entretien
Utilisateur anonyme
25 févr. 2020
Sampling technique like oversampling and downsampling. Models that adapt to unbalanced data like Ada-boosting. Or use anomaly detection methods.
Utilisateur anonyme
12 oct. 2021
The basic idea is sampling (oversampling like resampling) which is not a good option when dealing with huge imbalance. Another option is to set weights for class labels (larger weights for classes with fewer samples). A really good, but tough and many times not feasible to implement, is to do oversampling by using generative networks (i.e. GANs).
Utilisateur anonyme
24 avr. 2022
over/undersampling, GANs (I believe they require lots of data), and class weights (sometimes refer to class weights)