Imbalanced Classification Master Class in Python



Imbalanced Classification Master Class in Python

Rating 4.39 out of 5 (9 ratings in Udemy)


What you'll learn
  • How to use data sampling algorithms like SMOTE to transform the training dataset for an imbalanced dataset when fitting a range of machine learning models
  • How algorithms from the field of cost-sensitive learning can be used for imbalanced classification
  • How to use modified versions of standard algorithms like SVM and decision trees to take the class weighting into account
  • How to tune the threshold when interpreting predicted …
Duration 3 Hours 58 Minutes
Paid

Self paced

Intermediate Level

English (US)

129

Rating 4.39 out of 5 (9 ratings in Udemy)

Go to the Course
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