Adversarial Machine Learning
£64.99
- Authors:
- Anthony D. Joseph, University of California, Berkeley
- Blaine Nelson, Google
- Benjamin I. P. Rubinstein, University of Melbourne
- J. D. Tygar, University of California, Berkeley
- Publication planned for: February 2019
- availability: Not yet published - available from February 2019
- format: Hardback
- isbn: 9781107043466
£
64.99
Hardback
Looking for an inspection copy?
This title is not currently available on inspection
-
Written by leading researchers, this complete introduction brings together all the theory and tools needed for building robust machine learning in adversarial environments. Discover how machine learning systems can adapt when an adversary actively poisons data to manipulate statistical inference, learn the latest practical techniques for investigating system security and performing robust data analysis, and gain insight into new approaches for designing effective countermeasures against the latest wave of cyber-attacks. Privacy-preserving mechanisms and the near-optimal evasion of classifiers are discussed in detail, and in-depth case studies on email spam and network security highlight successful attacks on traditional machine learning algorithms. Providing a thorough overview of the current state of the art in the field, and possible future directions, this groundbreaking work is essential reading for researchers, practitioners and students in computer security and machine learning, and those wanting to learn about the next stage of the cybersecurity arms race.
Read more- The first book to provide a state-of-the-art review of adversarial machine learning
- Covers availability and integrity attacks, privacy-preserving mechanisms, near-optimal evasion of classifiers, and future directions for adversarial machine learning
- Includes in-depth case studies on email spam and network security
Reviews & endorsements
Advance praise: 'Data Science practitioners tend to be unaware of how easy it is for adversaries to manipulate and misuse adaptive machine learning systems. This book demonstrates the severity of the problem by providing a taxonomy of attacks and studies of adversarial learning. It analyzes older attacks as well as recently discovered surprising weaknesses in deep learning systems. A variety of defenses are discussed for different learning systems and attack types that could help researchers and developers design systems that are more robust to attacks.' Richard Lippmann, Lincoln Laboratory, Massachusetts Institute of Technology
See more reviewsAdvance praise: 'This is a timely book. Right time and right book, written with an authoritative but inclusive style. Machine learning is becoming ubiquitous. But for people to trust it, they first need to understand how reliable it is.' Fabio Roli, University of Cagliari, Italy
Customer reviews
Not yet reviewed
Be the first to review
Review was not posted due to profanity
×Product details
- Publication planned for: February 2019
- format: Hardback
- isbn: 9781107043466
- length: 338 pages
- dimensions: 254 x 178 x 19 mm
- weight: 0.84kg
- contains: 37 b/w illus. 8 tables
- availability: Not yet published - available from February 2019
Table of Contents
Part I. Overview of Adversarial Machine Learning:
1. Introduction
2. Background and notation
3. A framework for secure learning
Part II. Causative Attacks on Machine Learning:
4. Attacking a hypersphere learner
5. Availability attack case study: SpamBayes
6. Integrity attack case study: PCA detector
Part III. Exploratory Attacks on Machine Learning:
7. Privacy-preserving mechanisms for SVM learning
8. Near-optimal evasion of classifiers
Part IV. Future Directions in Adversarial Machine Learning:
9. Adversarial machine learning challenges.
Sorry, this resource is locked
Please register or sign in to request access. If you are having problems accessing these resources please email lecturers@cambridge.org
Register Sign in» Proceed