Scalable and Decentralized Algorithms for Anomaly Detection via Learning-Based Controlled Sensing

被引:1
作者
Joseph, Geethu [1 ]
Zhong, Chen [2 ]
Gursoy, M. Cenk [2 ]
Velipasalar, Senem [2 ]
Varshney, Pramod K. [2 ]
机构
[1] Delft Univ Technol, Signal Proc Syst Grp, NL-2628 Delft, Netherlands
[2] Syracuse Univ, Dept Elect Engn & Comp Sci, Syracuse, NY 13244 USA
来源
IEEE TRANSACTIONS ON SIGNAL AND INFORMATION PROCESSING OVER NETWORKS | 2023年 / 9卷
关键词
Active hypothesis testing; deep learning; reinforcement learning; actor-critic algorithm; quickest state estimation; sequential decision-making; sequential sensing; ASYMPTOTIC OPTIMALITY THEORY; DISTRIBUTED DETECTION; MULTIPLE SENSORS; SYSTEM;
D O I
10.1109/TSIPN.2023.3313818
中图分类号
TM [电工技术]; TN [电子技术、通信技术];
学科分类号
0808 ; 0809 ;
摘要
We address the problem of sequentially selecting and observing processes from a given set to find the anomalies among them. The decision-maker observes a subset of the processes at any given time instant and obtains a noisy binary indicator of whether or not the corresponding process is anomalous. We develop an anomaly detection algorithm that chooses the processes to be observed at a given time instant, decides when to stop taking observations, and declares the decision on anomalous processes. The objective of the detection algorithm is to identify the anomalies with an accuracy exceeding the desired value while minimizing the delay in decision making. We devise a centralized algorithm where the processes are jointly selected by a common agent as well as a decentralized algorithm where the decision of whether to select a process is made independently for each process. Our algorithms rely on a Markov decision process defined using the marginal probability of each process being normal or anomalous, conditioned on the observations. We implement the detection algorithms using the deep actor-critic reinforcement learning framework. Unlike prior work on this topic that has exponential complexity in the number of processes, our algorithms have computational and memory requirements that are both polynomial in the number of processes. We demonstrate the efficacy of these algorithms using numerical experiments by comparing them with state-of-the-art methods.
引用
收藏
页码:640 / 654
页数:15
相关论文
共 50 条
[31]   An Unsupervised Learning-Based Multivariate Anomaly Detection Method for Dynamic Attention Graphs [J].
Shi, Dunhuang ;
Zhang, Tao ;
Sun, Lei .
PROCEEDINGS OF THE 2024 6TH INTERNATIONAL CONFERENCE ON CONTROL AND COMPUTER VISION, ICCCV 2024, 2024, :27-31
[32]   A Comprehensive Review of Deep Learning-Based Anomaly Detection Methods for Precision Agriculture [J].
Gkountakos, Konstantinos ;
Ioannidis, Konstantinos ;
Demestichas, Konstantinos ;
Vrochidis, Stefanos ;
Kompatsiaris, Ioannis .
IEEE ACCESS, 2024, 12 :197715-197733
[33]   Deep learning-based classification and anomaly detection of side-channel signals [J].
Wang, Xiao ;
Zhou, Quan ;
Harer, Jacob ;
Brown, Gavin ;
Qiu, Shangran ;
Dou, Zhi ;
Wang, John ;
Hinton, Alan ;
Gonzalez, Carlos Aguayo ;
Chin, Peter .
CYBER SENSING 2018, 2018, 10630
[34]   A hybrid deep learning-based unsupervised anomaly detection in high dimensional data [J].
Muneer A. ;
Taib S.M. ;
Fati S.M. ;
Balogun A.O. ;
Aziz I.A. .
Computers, Materials and Continua, 2022, 70 (03) :6073-6088
[35]   A Hybrid Deep Learning-Based Unsupervised Anomaly Detection in High Dimensional Data [J].
Muneer, Amgad ;
Taib, Shakirah Mohd ;
Fati, Suliman Mohamed ;
Balogun, Abdullateef O. ;
Aziz, Izzatdin Abdul .
CMC-COMPUTERS MATERIALS & CONTINUA, 2022, 70 (03) :5363-5381
[36]   Coupling of unsupervised and supervised deep learning-based approaches for surface anomaly detection [J].
Racki, Domen ;
Tomazevic, Dejan ;
Skocaj, Danijel .
JOURNAL OF ELECTRONIC IMAGING, 2024, 33 (03)
[37]   A Hybrid Deep Learning-Based Model for Anomaly Detection in Cloud Datacenter Networks [J].
Garg, Sahil ;
Kaur, Kuljeet ;
Kumar, Neeraj ;
Kaddoum, Georges ;
Zomaya, Albert Y. ;
Ranjan, Rajiv .
IEEE TRANSACTIONS ON NETWORK AND SERVICE MANAGEMENT, 2019, 16 (03) :924-935
[38]   Investigating of Deep Learning-based Approaches for Anomaly Detection in IoT Surveillance Systems [J].
Huang, Jianchang ;
Cai, Yakun ;
Sun, Tingting .
INTERNATIONAL JOURNAL OF ADVANCED COMPUTER SCIENCE AND APPLICATIONS, 2023, 14 (12) :768-778
[39]   Design of IoT Network using Deep Learning-based Model for Anomaly Detection [J].
Varalakshmi, Sudha ;
Premnath, S. P. ;
Yogalakshmi, V ;
Vijayalakshmi, P. ;
Kavitha, V. R. ;
Vimalarani, G. .
PROCEEDINGS OF THE 2021 FIFTH INTERNATIONAL CONFERENCE ON I-SMAC (IOT IN SOCIAL, MOBILE, ANALYTICS AND CLOUD) (I-SMAC 2021), 2021, :216-220
[40]   Deep learning-based probabilistic anomaly detection for solar forecasting under cyberattacks [J].
Sun, Mucun ;
He, Li ;
Zhang, Jie .
INTERNATIONAL JOURNAL OF ELECTRICAL POWER & ENERGY SYSTEMS, 2022, 137