计算机科学
异常检测
入侵检测系统
人工智能
机器学习
背景(考古学)
固件
数据建模
数据挖掘
数据库
计算机硬件
生物
古生物学
作者
Jiamin Fan,Kui Wu,Yang Zhou,Zhengan Zhao,Shengqiang Huang
出处
期刊:IEEE Internet of Things Journal
[Institute of Electrical and Electronics Engineers]
日期:2022-11-03
卷期号:10 (10): 8590-8602
被引量:6
标识
DOI:10.1109/jiot.2022.3214840
摘要
It is often needed to update deep learning-based detection models in traffic anomaly detection systems for the Internet of Things (IoT) because of mislabeled samples or device firmware upgrades. Machine unlearning, a technique that quickly updates the anomaly detection model without retraining the model from scratch, has recently attracted much research attention. We propose a novel machine unlearning method, called virtual federated learning approach (ViFLa), which groups training data based on estimated unlearning probability and treats each group as a virtual client in the federated learning framework. Since the virtual clients are physically in the same machine, ViFLa only leverages the concept of data/local models isolation in federated learning without incurring any network communication. ViFLa adopts an attention-based aggregation method called enhanced class distribution weighted sum (ECDWS) to tackle the nonindependent and identically distributed (non-iid) data problem caused by the data grouping strategy. It also introduces a new state transition ring mechanism into the statistical query (SQ) learning framework to update the local model of each virtual client quickly. Using real-world IoT traffic data, we showcase the benefit of ViFLa regarding its efficiency and completeness for model updates in the context of IoT traffic anomaly detection.
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