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Semi-Supervised Machine Learning Aided Anomaly Detection Method in Cellular Networks

Yutao Lu, Juan Wang, Miao Liu, Kaixuan Zhang, Guan Gui, Tomoaki Ohtsuki, Fumiyuki Adachi

2020IEEE Transactions on Vehicular Technology23 citationsDOI

Abstract

The ever-increasing amount of data in cellular networks poses challenges for network operators to monitor the quality of experience (QoE). Traditional key quality indicators (KQIs)-based hard decision methods are difficult to undertake the task of QoE anomaly detection in the case of big data. To solve this problem, in this paper, we propose a KQIs-based QoE anomaly detection framework using semi-supervised machine learning algorithm, i.e., iterative positive sample aided one-class support vector machine (IPS-OCSVM). There are four steps for realizing the proposed method while the key step is combining machine learning with the network operator's expert knowledge using OCSVM. Our proposed IPS-OCSVM framework realizes QoE anomaly detection through soft decision and can easily fine-tune the anomaly detection ability on demand. Moreover, we prove that the fluctuation of KQIs thresholds based on expert knowledge has a limited impact on the result of anomaly detection. Finally, experiment results are given to confirm the proposed IPS-OCSVM framework for QoE anomaly detection in cellular networks.

Topics & Concepts

Anomaly detectionComputer scienceSupport vector machineMachine learningKey (lock)Artificial intelligenceTask (project management)Supervised learningAnomaly (physics)Data miningArtificial neural networkEngineeringPhysicsCondensed matter physicsSystems engineeringComputer securityAnomaly Detection Techniques and ApplicationsNetwork Security and Intrusion DetectionData-Driven Disease Surveillance
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