Linkage on Security, Privacy and Fairness in Federated Learning: New Balances and New Perspectives
Linlin Wang, Tianqing Zhu, Wanlei Zhou, Philip S. Yu

TL;DR
This paper surveys the complex interplay between privacy, security, and fairness in federated learning, highlighting trade-offs and proposing fairness as a bridge to improve model security and privacy.
Contribution
It provides a comprehensive analysis of privacy, security, and fairness issues in federated learning and explores their interconnections and trade-offs, offering new insights and future research directions.
Findings
Identifies trade-offs between privacy and fairness, and security and fairness.
Highlights fairness as a potential bridge to enhance security or privacy.
Provides a comprehensive overview of current challenges and future directions.
Abstract
Federated learning is fast becoming a popular paradigm for applications involving mobile devices, banking systems, healthcare, and IoT systems. Hence, over the past five years, researchers have undertaken extensive studies on the privacy leaks, security threats, and fairness associated with these emerging models. For the most part, these three critical concepts have been studied in isolation; however, recent research has revealed that there may be an intricate interplay between them. For instance, some researchers have discovered that pursuing fairness may compromise privacy, or that efforts to enhance security can impact fairness. These emerging insights shed light on the fundamental connections between privacy, security, and fairness within federated learning, and, by delving deeper into these interconnections, we may be able to significantly augment research and development across…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data
