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Data Augmentation with Python

You're reading from   Data Augmentation with Python Enhance deep learning accuracy with data augmentation methods for image, text, audio, and tabular data

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Product type Paperback
Published in Apr 2023
Publisher Packt
ISBN-13 9781803246451
Length 394 pages
Edition 1st Edition
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Author (1):
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Duc Haba Duc Haba
Author Profile Icon Duc Haba
Duc Haba
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Toc

Table of Contents (17) Chapters Close

Preface 1. Part 1: Data Augmentation
2. Chapter 1: Data Augmentation Made Easy FREE CHAPTER 3. Chapter 2: Biases in Data Augmentation 4. Part 2: Image Augmentation
5. Chapter 3: Image Augmentation for Classification 6. Chapter 4: Image Augmentation for Segmentation 7. Part 3: Text Augmentation
8. Chapter 5: Text Augmentation 9. Chapter 6: Text Augmentation with Machine Learning 10. Part 4: Audio Data Augmentation
11. Chapter 7: Audio Data Augmentation 12. Chapter 8: Audio Data Augmentation with Spectrogram 13. Part 5: Tabular Data Augmentation
14. Chapter 9: Tabular Data Augmentation 15. Index 16. Other Books You May Enjoy

Systemic biases

If we cannot conceive a method to calculate computational and human biases, then it is impossible to devise an algorithm to compute systemic biases programmatically. We must rely on human judgment to spot the systemic bias in the dataset. Furthermore, it has to be specific to a particular dataset with a distinct AI prediction goal. There are no generalization rules and no fairness matrix to follow.

Systemic biases in AI are the most notorious of all AI biases. Simply put, systemic discrimination is when a business, institution, or government limits access to AI benefits to a group and excludes other underserved groups. It is insidious because it hides behind society’s existing rules and norms. Institutional racism and sexism are the most common examples. Another AI accessibility issue in everyday occurrences is limiting or excluding admission to people with disabilities, such as the sight and hearing impaired.

The poor and the underserved have no representation...

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