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Machine Learning for Imbalanced Data

You're reading from   Machine Learning for Imbalanced Data Tackle imbalanced datasets using machine learning and deep learning techniques

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Product type Paperback
Published in Nov 2023
Publisher Packt
ISBN-13 9781801070836
Length 344 pages
Edition 1st Edition
Languages
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Authors (2):
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Dr. Mounir Abdelaziz Dr. Mounir Abdelaziz
Author Profile Icon Dr. Mounir Abdelaziz
Dr. Mounir Abdelaziz
Kumar Abhishek Kumar Abhishek
Author Profile Icon Kumar Abhishek
Kumar Abhishek
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Toc

Table of Contents (15) Chapters Close

Preface 1. Chapter 1: Introduction to Data Imbalance in Machine Learning FREE CHAPTER 2. Chapter 2: Oversampling Methods 3. Chapter 3: Undersampling Methods 4. Chapter 4: Ensemble Methods 5. Chapter 5: Cost-Sensitive Learning 6. Chapter 6: Data Imbalance in Deep Learning 7. Chapter 7: Data-Level Deep Learning Methods 8. Chapter 8: Algorithm-Level Deep Learning Techniques 9. Chapter 9: Hybrid Deep Learning Methods 10. Chapter 10: Model Calibration 11. Assessments 12. Index 13. Other Books You May Enjoy Appendix: Machine Learning Pipeline in Production

Chapter 2 – Oversampling Methods

  1. This is left as an exercise for you.
  2. One approach is to oversample the minority class by 20x to balance both classes. It’s important to note that achieving the perfect balance between the classes is not always necessary; a slight imbalance may be acceptable, depending on the specific requirements and constraints. This technique is not applied at test time as the test data should remain representative of what we would encounter in the real world.
  3. The primary concern with oversampling before splitting the data into training, test, and validation sets is data leakage. This occurs when duplicate samples end up in both the training and test/validation sets, leading to overly optimistic performance metrics. The model may perform well during evaluation because it has already seen the same examples during training, but this can result in poor generalization to new, unseen data. To mitigate this risk, it’s crucial to first split...
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