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, 2023 · Anglais · Relié (321 pages)
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Détails du livre

Format Relié
Pages 321
Langue Anglais
Publié Mar 7, 2023
Éditeur Springer
ISBN-10 3030997715
ISBN-13 9783030997717

Description

In the evolving field of artificial intelligence, the book delves into the critical challenges posed by adversarial machine learning. The authors meticulously explore the various attack surfaces that threaten the integrity of deep learning networks. They highlight specific examples of security vulnerabilities that can be exploited, showcasing the depths of the challenges faced by researchers and practitioners alike.

The discussion extends into effective defense mechanisms, offering innovative strategies designed to fortify these networks against potential adversarial threats. Readers will gain a comprehensive understanding of how various techniques can be employed to enhance the robustness of machine learning models, ensuring their reliability in real-world applications.

Furthermore, the text engages with foundational learning theories, linking them to contemporary issues in AI. This synthesis not only underscores the importance of theoretical underpinnings but also promotes a deeper awareness of the implications of adversarial machine learning in the broader context of technology and ethics. Each chapter serves as an invitation to further explore the intricate relationship between security and functionality in artificial intelligence.

Genres

Contemporain
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