ADTCD: An Adaptive Anomaly Detection Approach Toward Concept Drift in IoT

被引:10
|
作者
Xu, Lijuan [1 ]
Ding, Xiao [1 ]
Peng, Haipeng [2 ,3 ]
Zhao, Dawei [1 ]
Li, Xin [1 ]
机构
[1] Qilu Univ Technol, Shandong Comp Sci Ctr, Shandong Prov Key Lab Comp Networks, Natl Supercomp Ctr Jinan,Shandong Acad Sci, Jinan 250014, Peoples R China
[2] Beijing Univ Posts & Telecommun, Informat Secur Ctr, State Key Lab Networking & Switching Technol, Beijing 100876, Peoples R China
[3] Beijing Univ Posts & Telecommun, Natl Engn Lab Disaster Backup & Recovery, Beijing 100876, Peoples R China
基金
中国国家自然科学基金;
关键词
Anomaly detection; Data models; Adaptation models; Deep learning; Time series analysis; Mathematical models; Computational modeling; concept drift; network security; time series; ONLINE;
D O I
10.1109/JIOT.2023.3265964
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
The data collected by sensors is streaming data in the Internet of Things (IoT). Although existing deep-learning-based anomaly detection methods generally perform well on static data, they struggle to respond timely to streaming data after distribution changes. However, streaming data suffers from conceptual drift due to the highly dynamic nature of IoT. In network security, concept drift-oriented anomaly detection is a crucial task, because it can adjust the model to adapt to the latest data, and detect attacks in time. Existing streaming anomaly detection methods are confronted with some challenges, including the latency of model updates, the uneven importance of new data, and the self-poisoning due to model self-updates. To tackle the above challenges, we propose a knowledge distillation-based adaptive anomaly detection model toward concept drift, ADTCD. ADTCD transfers the knowledge of the teacher model to the student model and only updates the student model to reduce the delay. We construct an algorithm of dynamically adjusting model parameters, which dynamically adjusts model weights through local inference on new samples, in order to improve the model's responsiveness to new distribution data, meanwhile solving the problem of uneven importance of new data. In addition, we adopt a one-class support vector-based outlier removal method to tackle the self-poisoning problem. In comprehensive experiments on seven high-dimensional data sets, ADTCD achieves an AUC improvement of 12.46% compared to the state-of-the-art streaming anomaly detection methods. Our future direction will focus on exploring the concept-drift problem using methods beyond autoencoders.
引用
收藏
页码:15931 / 15942
页数:12
相关论文
共 50 条
  • [21] A Fully Unsupervised and Efficient Anomaly Detection Approach with Drift Detection Capability
    Tan, Chang How
    Lee, Vincent C. S.
    Salehi, Mahsa
    Marusic, Slaven
    Jayawardena, Srimal
    Lucke, Dion
    21ST IEEE INTERNATIONAL CONFERENCE ON DATA MINING WORKSHOPS ICDMW 2021, 2021, : 312 - 321
  • [22] Drift Adaptive Online DDoS Attack Detection Framework for IoT System
    Beshah, Yonas Kibret
    Abebe, Surafel Lemma
    Melaku, Henock Mulugeta
    ELECTRONICS, 2024, 13 (06)
  • [23] Concept Drift Detection of Event Streams Using an Adaptive Window
    Hassani, Marwan
    PROCEEDINGS OF THE 33RD INTERNATIONAL ECMS CONFERENCE ON MODELLING AND SIMULATION (ECMS 2019), 2019, 33 (01): : 230 - 239
  • [24] Adaptive cascade of boosted ensembles for face detection in concept drift
    Teo Susnjak
    Andre L. C. Barczak
    Ken A. Hawick
    Neural Computing and Applications, 2012, 21 : 671 - 682
  • [25] Adaptive cascade of boosted ensembles for face detection in concept drift
    Susnjak, Teo
    Barczak, Andre L. C.
    Hawick, Ken A.
    NEURAL COMPUTING & APPLICATIONS, 2012, 21 (04): : 671 - 682
  • [26] Concept drift robust adaptive novelty detection for data streams
    Cejnek, Matous
    Bukovsky, Ivo
    NEUROCOMPUTING, 2018, 309 : 46 - 53
  • [27] DB-Drift: Concept drift aware density-based anomaly detection for maritime trajectories
    Henriksen, Amelia
    2023 SENSOR SIGNAL PROCESSING FOR DEFENCE CONFERENCE, SSPD, 2023, : 96 - 100
  • [28] Real-Time Adaptive Anomaly Detection in Industrial IoT Environments
    Raeiszadeh, Mahsa
    Ebrahimzadeh, Amin
    Glitho, Roch H.
    Eker, Johan
    Mini, Raquel A. F.
    IEEE TRANSACTIONS ON NETWORK AND SERVICE MANAGEMENT, 2024, 21 (06): : 6839 - 6856
  • [29] Online Anomaly Detection with Concept Drift Adaptation using Recurrent Neural Networks
    Saurav, Sakti
    Malhotra, Pankaj
    Tv, Vishnu
    Gugulothu, Narendhar
    Vig, Lovekesh
    Agarwal, Puneet
    Shroff, Gautam
    PROCEEDINGS OF THE ACM INDIA JOINT INTERNATIONAL CONFERENCE ON DATA SCIENCE AND MANAGEMENT OF DATA (CODS-COMAD'18), 2018, : 78 - 87
  • [30] Concept drift challenge in multimedia anomaly detection: A case study with facial datasets
    Kumari, Pratibha
    Choudhary, Priyankar
    Kujur, Vinit
    Atrey, Pradeep K.
    Saini, Mukesh
    SIGNAL PROCESSING-IMAGE COMMUNICATION, 2024, 123