Adversial robustness for machine learning

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Détails bibliographiques
Auteur principal: Chen, Pin-Yu (19..-). (Auteur)
Autres auteurs: Hsieh, Cho-Jui (19..-). (Auteur)
Support: E-Book
Langue: Anglais
Publié: London ; San Diego (Calif.) : Elsevier : Academic Press.
Sujets:
Autres localisations: Voir dans le Sudoc
Résumé: Adversarial Robustness for Machine Learning summarizes the recent progress on this topic and introduces popular algorithms on adversarial attack, defense and verification. Sections cover adversarial attack, verification and defense, mainly focusing on image classification applications which are the standard benchmark considered in the adversarial robustness community. Other sections discuss adversarial examples beyond image classification, other threat models beyond testing time attack, and applications on adversarial robustness. For researchers, this book provides a thorough literature review that summarizes latest progress in the area, which can be a good reference for conducting future research. In addition, the book can also be used as a textbook for graduate courses on adversarial robustness or trustworthy machine learning. While machine learning (ML) algorithms have achieved remarkable performance in many applications, recent studies have demonstrated their lack of robustness against adversarial disturbance. The lack of robustness brings security concerns in ML models for real applications such as self-driving cars, robotics controls and healthcare systems
Accès en ligne: Accès à l'E-book
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Résumé:Adversarial Robustness for Machine Learning summarizes the recent progress on this topic and introduces popular algorithms on adversarial attack, defense and verification. Sections cover adversarial attack, verification and defense, mainly focusing on image classification applications which are the standard benchmark considered in the adversarial robustness community. Other sections discuss adversarial examples beyond image classification, other threat models beyond testing time attack, and applications on adversarial robustness. For researchers, this book provides a thorough literature review that summarizes latest progress in the area, which can be a good reference for conducting future research. In addition, the book can also be used as a textbook for graduate courses on adversarial robustness or trustworthy machine learning. While machine learning (ML) algorithms have achieved remarkable performance in many applications, recent studies have demonstrated their lack of robustness against adversarial disturbance. The lack of robustness brings security concerns in ML models for real applications such as self-driving cars, robotics controls and healthcare systems
Description:Couverture (https://static2.cyberlibris.com/books_upload/136pix/9780128242575.jpg).
Bibliographie:Bibliogr. p. 251-271. Index.
ISBN:9780128242575
Accès:L'accès en ligne est réservé aux établissements ou bibliothèques ayant souscrit l'abonnement