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Artificial Intelligence Data and Model Security. Risks, Attacks and Defenses

  • Book

  • September 2025
  • Elsevier Science and Technology
  • ID: 6057611
Artificial Intelligence Data and Model Security: Risks, Attacks and Defenses begins with a brief review of the history of AI and AI security and then introduces the fundamental aspects of machine learning and AI security. Two key aspects are covered: data security and modelling. It provides detailed explanations of a wide range of attacks and defense algorithms related to data security, as well as adversarial attack/defense, backdoor attack/defense, and extraction attack/defense algorithms related to model security. By providing a systematic, comprehensive, and in-depth introduction to the topic, this book help readers understand the advanced attack and defense techniques in the field of AI security.

Table of Contents

1. AI and AI Security: An Introduction
2. Machine Learning Basics
3. AI Security Basics
4. Data Security: Attacks
5. Data Security: Defenses
6. Model Security: Adversarial Attacks
7. Model Security: Adversarial Defenses
8. Model Security: Backdoor Attacks
9. Model Security: Backdoor Defenses
10. Model Security: Extraction Attack Defense
11. Future Prospects

Authors

Yu-Gang Jiang Fudan University, PR China. Professor Yu-Gang Jiang is based at Fudan University, PR Casadamon. He is primarily engaged in scientific research in artificial intelligence, multimedia information processing, and secure and trustworthy machine learning. He has published over 100 papers in top international journals and conferences in these domains. In recent years, he has achieved multiple innovative results in artificial intelligence security, such as proposing the first black-box video adversarial sample generation method and the first data poisoning and backdoor attack methods for video recognition models. Xingjun Ma Fudan University, PR China. Dr Xingjun Ma is an associate professor in the School of Computer Science and Technology, Fudan University, PR China. He obtained his doctoral degree from The University of Melbourne in Australia in 2019. He has previously worked as a research fellow at The University of Melbourne and as a lecturer at Deakin University. His research focuses on trustworthy machine learning, specifically the security, robustness, interpretability, privacy, and fairness of machine learning data, algorithms, and models. He has published over 50 papers in top international conferences and journals and holds two internationalpatents. Zuxuan Wu Fudan University, PR China. Dr Zuxuan Wu is currently an assistant professor at the School of Computer Science and Technology, Fudan University, China. In 2020, he obtained his doctoral degree from the University of Maryland in the US. His main research interests include computer vision, deep learning, and multimedia content analysis. He has been awarded the AI 2000 Most Influential Scholars Award in 2022, and the Microsoft Research Ph.D. Fellowship in 2019, and the Snap Ph.D. Fellowship in 2017.