Y. Neil Qu Xiaoming Wu Guobin Zhang Shaoting Tang Longxiang Gao Philip S. Yu Qu Machine Unlearning: Foundations, Algorithms, and Advances in Quantum Technology

Machine Unlearning: Foundations, Algorithms, and Advances in Quantum Technology

von Y. Neil Qu Xiaoming Wu Guobin Zhang Shaoting Tang Longxiang Gao Philip S. Yu

Preis unbekannt

Buch in deiner Nähe kaufen


...oder deine aktuelle Postleitzahl eingeben:
oder

Beschreibung

This book explores the cutting-edge concept of machine unlearning and its application across various fields, especially within AI and machine learning models. It addresses the critical need to "forget" specific data in models to comply with evolving privacy regulations, enhance model robustness, and mitigate security risks. With a focus on real-world implications, this book presents a thorough analysis of unlearning techniques and frameworks, detailing approaches from exact data removal to approximate, efficient methods that support high-performance models in dynamic environments.

The chapters delve into machine unlearning for large language models, addressing privacy concerns in unstructured data, and the challenges of catastrophic recalling. Each chapter provides readers with actionable insights into the mechanisms, benefits, and trade-offs involved in implementing unlearning. Readers will discover pioneering frameworks, such as federated fuzzy unlearning, and advanced techniques that combat over-unlearning, ensuring model integrity without extensive retraining.

This book is designed for researchers, AI practitioners, and data scientists interested in integrating unlearning for ethical, secure, and adaptive AI systems. A foundational knowledge in AI or machine learning is recommended. By the end, readers will gain a robust understanding of unlearning methodologies and practical strategies to implement them within various applications, driving responsible AI innovation.


This book explores the cutting-edge concept of machine unlearning and its application across various fields, especially within AI and machine learning models. It addresses the critical need to "forget" specific data in models to comply with evolving privacy regulations, enhance model robustness, and mitigate security risks. With a focus on real-world implications, this book presents a thorough analysis of unlearning techniques and frameworks, detailing approaches from exact data removal to approximate, efficient methods that support high-performance models in dynamic environments.

The chapters delve into machine unlearning for large language models, addressing privacy concerns in unstructured data, and the challenges of catastrophic recalling. Each chapter provides readers with actionable insights into the mechanisms, benefits, and trade-offs involved in implementing unlearning. Readers will discover pioneering frameworks, such as federated fuzzy unlearning, and advanced techniques that combat over-unlearning, ensuring model integrity without extensive retraining.

This book is designed for researchers, AI practitioners, and data scientists interested in integrating unlearning for ethical, secure, and adaptive AI systems. A foundational knowledge in AI or machine learning is recommended. By the end, readers will gain a robust understanding of unlearning methodologies and practical strategies to implement them within various applications, driving responsible AI innovation.


Reviews exhaustive the key recent research into machine unlearning methodologies and techniques Enriches understanding of integration of emerging machine unlearning methods and other advanced technologies Maximize reader insights into how machine unlearning can further help data and knowledge governance

Autor*in

Y. Neil Qu

Themen in »Machine Unlearning: Foundations, Algorithms, and Advances in Quantum Technology«

Machine Unlearning data governance privacy protection verification of unlearning catastrophic recalling over-unlearning data synthetics federated unlearning multi-task unlearning fuzzy logic

Stimmen zu »Machine Unlearning: Foundations, Algorithms, and Advances in Quantum Technology«

Details

ISBN: 9789819229123
Verlag: Springer Singapore
Erscheinung: 11.09.2026

Link teilen


Über buchnah.de | Die Buchhandlungen | Die Verlage | Impressum & Kontakt | Datenschutz | Presse


Auf dieser Seite kannst Du Buchhandlungen in der Nähe finden