Adversarial Machine Learning: Attack Surfaces, Defence Mechanisms, Learning Theories in Artificial Intelligence

Adversarial Machine Learning: Attack Surfaces, Defence Mechanisms, Learning Theories in Artificial Intelligence

Aneesh Sreevallabh Chivukula , Xinghao Yang , Bo Liu
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Mar 7, 2024 · 英語 · 平裝書 (324 頁數)
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書籍詳情

格式 平裝書
頁數 324
語言 英語
已出版 Mar 7, 2024
出版商 Springer
ISBN-10 303099774X
ISBN-13 9783030997748

描述

The book delves into the intricate world of adversarial machine learning, exploring the vulnerabilities present within artificial intelligence systems. It covers various attack surfaces that can be exploited and examines the implications of these threats on security and reliability. Through a comprehensive analysis, the authors unravel the complex dynamics of adversarial attacks and the mechanisms that can defend against them.

Additionally, the text discusses the theoretical underpinnings of learning in artificial intelligence, providing a well-rounded perspective on the challenges and strategies in this evolving field. With contributions from a team of experts, it serves as a crucial resource for researchers and practitioners seeking to enhance the resilience of AI technologies against adversarial efforts.

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