Backdoor Attacks against Learning-Based Algorithms

Backdoor Attacks against Learning-Based Algorithms

Shaofeng Li , Haojin Zhu , Wen Wu
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May 30, 2024 · English · Hardcover (164 pages)
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Book Details

Format Hardcover
Pages 164
Language English
Published May 30, 2024
Publisher Springer
ISBN-10 3031573889
ISBN-13 9783031573880

Description

This work delves into the intricate world of backdoor attacks, a sophisticated method of data poisoning that poses significant risks to learning-based algorithms. The authors, seasoned experts in the field, explore how these attacks can subtly manipulate machine learning models, compromising their integrity and leading to unexpected and potentially harmful outputs.

Throughout the chapters, the narrative unfolds with a careful examination of the mechanisms behind backdoor attacks, illustrating their implications for security in various applications. By combining theoretical insights with real-world examples, the authors provide a critical understanding of the vulnerabilities inherent in contemporary machine learning systems and the necessity for robust countermeasures.
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