Addressing Concept Drift in IoT Anomaly Detection: Drift Detection, Interpretation, and Adaptation

IF 3 3区 计算机科学 Q2 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE IEEE Transactions on Sustainable Computing Pub Date : 2024-04-26 DOI:10.1109/TSUSC.2024.3386667
Lijuan Xu;Ziyu Han;Dawei Zhao;Xin Li;Fuqiang Yu;Chuan Chen
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Abstract

Anomaly detection plays a vital role as a crucial security measure for edge devices in Artificial Intelligence and Internet of Things (AIoT). With the rapid development of IoT (Internet of Things), changes in system configurations and the introduction of new devices can lead to significant alterations in device relationships and data flows within the IoT, thereby triggering concept drift. Previously trained anomaly detection models fail to adapt to the changed distribution of streaming data, resulting in a high number of false positive events. This paper aims to address the issue of concept drift in IoT anomaly detection by proposing a comprehensive Concept Drift Detection, Interpretation, and Adaptation framework (CDDIA). We focus on accurately capturing the concept drift of normal data in unsupervised scenarios. To interpret drift samples, we integrate a search optimization algorithm and the SHAP method, providing a comprehensive interpretation of drift samples at both the sample and feature levels. Simultaneously, by utilizing the sample-level interpretation results for filtering new and old samples, we retrain the anomaly detection model to mitigate the impact of concept drift and reduce the false positive rate. This integrated strategy demonstrates significant advantages in maintaining model stability and reliability. The experimental results indicate that our method outperforms five baseline methods in adaptability across three datasets and provides interpretability for samples experiencing concept drift.
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物联网异常检测中的寻址概念漂移:漂移检测,解释和适应
在人工智能和物联网(AIoT)中,异常检测作为边缘设备的关键安全措施发挥着至关重要的作用。随着物联网(IoT)的快速发展,系统配置的变化和新设备的引入可能导致物联网内部设备关系和数据流的重大变化,从而引发概念漂移。以前训练的异常检测模型不能适应流数据分布的变化,导致大量的误报事件。本文旨在通过提出一个全面的概念漂移检测、解释和适应框架(CDDIA)来解决物联网异常检测中的概念漂移问题。我们专注于在无监督场景中准确捕获正常数据的概念漂移。为了解释漂移样本,我们整合了搜索优化算法和SHAP方法,在样本和特征水平上对漂移样本进行了全面的解释。同时,利用样本级解释结果对新旧样本进行过滤,重新训练异常检测模型,以减轻概念漂移的影响,降低误报率。这种集成策略在保持模型稳定性和可靠性方面具有显著的优势。实验结果表明,该方法在三个数据集上的适应性优于五种基线方法,并为经历概念漂移的样本提供了可解释性。
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来源期刊
IEEE Transactions on Sustainable Computing
IEEE Transactions on Sustainable Computing Mathematics-Control and Optimization
CiteScore
7.70
自引率
2.60%
发文量
54
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