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Efficient Jamming Identification in Wireless Communication: Using Small Sample Data Driven Naive Bayes Classifier

Yuxin Shi, Xinjin Lu, Yingtao Niu, Yusheng Li

2021IEEE Wireless Communications Letters55 citationsDOI

Abstract

The identification of malicious jamming pattern is significant for wireless communication system to adopt targeted anti-jamming approaches. Efficient identification of malicious jamming patterns requires sufficient sample data and computing resources for the complex electromagnetic environment. However, with the use of portable communication equipment and emergency communications, it is difficult to ensure adequate sample data and computing resources. Against this background, this letter focuses on the jamming identification based on a small sample data-driven Naive Bayes classifier. The main idea is to obtain approximate conditional feature probability via data augment and kernel density estimation (KDE) from a small sample labelled data and construct Naive Bayes classifier, so as to form a fast jamming recognition method. Simulation results show that compared with the methods using decision tree or simple neutral network, the proposed scheme achieves a better average accuracy between six jamming patterns, as well as low-complexity.

Topics & Concepts

Computer scienceJammingNaive Bayes classifierWirelessData miningClassifier (UML)Artificial intelligenceBayes classifierDecision treeMachine learningSupport vector machineTelecommunicationsThermodynamicsPhysicsWireless Signal Modulation ClassificationWireless Communication Security TechniquesNetwork Security and Intrusion Detection
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