- Neu
Li / Yuan / Ni Security and Resilience in Distributed Machine Learning
Erscheinungsjahr 2026
ISBN: 978-3-032-23959-4
Verlag: Springer International Publishing
Format: PDF
Kopierschutz: 1 - PDF Watermark
Challenges, Techniques, and Future Directions
E-Book, Englisch, 238 Seiten
Reihe: Springer Series in Reliability Engineering
ISBN: 978-3-032-23959-4
Verlag: Springer International Publishing
Format: PDF
Kopierschutz: 1 - PDF Watermark
This book offers a comprehensive exploration of federated learning (FL), a novel approach to decentralized, privacy-preserving machine learning. This book delves into the resilience and security challenges inherent to FL, such as model poisoning and malicious attacks, that jeopardize system integrity. Through cutting-edge research and practical insights, the book introduces defense mechanisms like representational similarity analysis and visual explanation techniques, which safeguard FL models while ensuring performance and scalability. It also explores the evolving landscape of FL, including the integration of graph neural networks, explainable AI, and energy-efficient designs that drive sustainability in distributed systems. As FL becomes increasingly vital across industries—from healthcare and finance to IoT and smart cities—this book addresses the critical balance between security, functionality, and compliance with global data privacy regulations. It is an essential resource for researchers, industry professionals, and policymakers aiming to navigate and contribute to the rapidly growing domain of FL. By bridging theory and practice, this book contributes to advancing secure and resilient FL technologies.
Zielgruppe
Research
Autoren/Hrsg.
Weitere Infos & Material
Part 1: Foundations of federated learning and its challenges.- Introduction to federated learning.- Threat landscape in federated learning.- Resilience and security of graph-based federated learning.- Part 2: Adversarial attacks on federated learning.- Model poisoning via variational graph representations.- Biasing federated learning based on adversarial graph attention networks.- Data-agnostic MP Techniques.- Part 3: Defense mechanisms in federated learning.- Privacy-aware wireless federated learning.- Exploring visual explanations for attack detection.- Privacy-utility trade-off in federated learning.- Part 4: Emerging trends and future directions.- Towards fully explainable federated learning.- Sustainability in federated learning.- Summary and outlook.




