差别隐私
稳健性(进化)
计算机科学
信息隐私
异常检测
原始数据
GSM演进的增强数据速率
分布式数据库
联合学习
数据挖掘
分布式计算
分布式计算环境
边缘计算
钥匙(锁)
特征提取
特征工程
边缘设备
数据建模
分布式学习
隐私保护
人工智能
训练集
信息泄露
特征(语言学)
数据完整性
作者
Yong Zhang,Zirui Zhuang,Qi Qi,Haifeng Sun,Shaoxiong Zhu,Xiaoyuan Fu,Yì Wáng
标识
DOI:10.1109/srds69199.2025.00043
摘要
Anomaly detection in distributed systems faces critical challenges from feature heterogeneity—where incomplete or divergent feature sets across nodes degrade detection relia-bility—and privacy risks under regulations like GDPR. While federated learning (FL) enables collaborative training without raw data sharing, existing solutions fail to address both challenges simultaneously: traditional FL suffers from performance drops under feature-missing scenarios, and differential privacy techniques introduce utility penalties. This paper proposes FedMI, a vertical federated learning framework that achieves provable privacy preservation and robust anomaly detection in feature-heterogeneous environments. FedMI's key innovations include a novel framework for vertical federated learning in anomaly detection for distributed systems that maintains high detection accuracy, mimicking real-world distributed system conditions, and a mutual information-guided training mechanism that quantifies and minimizes privacy leakage during federated updates. Evaluations on healthcare, financial, and industrial sensor datasets demonstrate FedMI's robustness: it achieves performance comparable to centralized methods in F1-score under data-island scenarios while ensuring compliance with privacy constraints. By unifying privacy quantification and robustness to feature heterogeneity, FedMI advances the development of dependable AI-driven monitoring for distributed systems.
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