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Machine Learning Security Principles

You're reading from   Machine Learning Security Principles Keep data, networks, users, and applications safe from prying eyes

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Product type Paperback
Published in Dec 2022
Publisher Packt
ISBN-13 9781804618851
Length 450 pages
Edition 1st Edition
Languages
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Author (1):
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John Paul Mueller John Paul Mueller
Author Profile Icon John Paul Mueller
John Paul Mueller
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Table of Contents (19) Chapters Close

Preface 1. Part 1 – Securing a Machine Learning System
2. Chapter 1: Defining Machine Learning Security FREE CHAPTER 3. Chapter 2: Mitigating Risk at Training by Validating and Maintaining Datasets 4. Chapter 3: Mitigating Inference Risk by Avoiding Adversarial Machine Learning Attacks 5. Part 2 – Creating a Secure System Using ML
6. Chapter 4: Considering the Threat Environment 7. Chapter 5: Keeping Your Network Clean 8. Chapter 6: Detecting and Analyzing Anomalies 9. Chapter 7: Dealing with Malware 10. Chapter 8: Locating Potential Fraud 11. Chapter 9: Defending against Hackers 12. Part 3 – Protecting against ML-Driven Attacks
13. Chapter 10: Considering the Ramifications of Deepfakes 14. Chapter 11: Leveraging Machine Learning for Hacking 15. Part 4 – Performing ML Tasks in an Ethical Manner
16. Chapter 12: Embracing and Incorporating Ethical Behavior 17. Index 18. Other Books You May Enjoy

Defining anomalies

In the ML realm, anomalies represent data that lies outside of the expected range. The anomaly may occur accidentally, or someone may have put it there, but an anomaly is usually unexpected and potentially unwanted. Anomalies come in two forms:

  • Outliers: When the data doesn’t fit in with the rest of the data, it’s an outlier. An outlier can come in many forms, but the defining characteristic is that it’s definitely not wanted because it skews any sort of analysis performed with it in place.
  • Novelties: Sometimes, the data is outside the normal range, but it actually does fit in with the rest of the data. In this case, the data represents a new example that must be considered as part of any analysis. Otherwise, the analysis will fail to represent the true state of whatever the analysis is supposed to bring to light.

Part of the problem, then, is that both kinds of anomaly lie outside the normal range, but one is wanted and the...

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