Machine Learning with Imbalanced Data



Machine Learning with Imbalanced Data

Rating 4.77 out of 5 (474 ratings in Udemy)


What you'll learn
  • Apply random under-sampling to remove observations from majority classes
  • Perform under-sampling by removing observations that are hard to classify
  • Carry out under-sampling by retaining observations at the boundary of class separation
  • Apply random over-sampling to augment the minority class
  • Create syntethic data to increase the examples of the minority class
  • Implement SMOTE and its variants to synthetically generate data
  • Use …
Duration 11 Hours 58 Minutes
Paid

Self paced

Intermediate Level

English (US)

5466

Rating 4.77 out of 5 (474 ratings in Udemy)

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