Book Image

Machine Learning Security Principles

By : John Paul Mueller
Book Image

Machine Learning Security Principles

By: John Paul Mueller

Overview of this book

Businesses are leveraging the power of AI to make undertakings that used to be complicated and pricy much easier, faster, and cheaper. The first part of this book will explore these processes in more depth, which will help you in understanding the role security plays in machine learning. As you progress to the second part, you’ll learn more about the environments where ML is commonly used and dive into the security threats that plague them using code, graphics, and real-world references. The next part of the book will guide you through the process of detecting hacker behaviors in the modern computing environment, where fraud takes many forms in ML, from gaining sales through fake reviews to destroying an adversary’s reputation. Once you’ve understood hacker goals and detection techniques, you’ll learn about the ramifications of deep fakes, followed by mitigation strategies. This book also takes you through best practices for embracing ethical data sourcing, which reduces the security risk associated with data. You’ll see how the simple act of removing personally identifiable information (PII) from a dataset lowers the risk of social engineering attacks. By the end of this machine learning book, you'll have an increased awareness of the various attacks and the techniques to secure your ML systems effectively.
Table of Contents (19 chapters)
1
Part 1 – Securing a Machine Learning System
5
Part 2 – Creating a Secure System Using ML
12
Part 3 – Protecting against ML-Driven Attacks
15
Part 4 – Performing ML Tasks in an Ethical Manner

Mitigating Inference Risk by Avoiding Adversarial Machine Learning Attacks

Many adversarial attacks don’t occur directly through data, as described in Chapter 2. Instead, they rely on attacking the machine learning (ML) algorithms or, more often than not, the resulting models. Such an attack is termed adversarial ML because it relies on someone purposely attacking the software. In other words, unlike data attacks where accidental damage, inappropriate selection of models or algorithms, or human mistakes come into play, this form of adversarial attack is all about someone purposely causing damage to achieve some goal.

Attacking an ML algorithm or model is meant to elicit a particular result. The result isn’t always achieved, but there is a specific goal in mind. As researchers and hackers continue to experiment with ways to fool ML algorithms and obtain a particular result, the potential for serious consequences becomes greater. Fortunately, the attempts to overcome...