Evaluation of supervised learning algorithms in binary and multi-class network anomalies detection

Abdoulaye Tapsoba, F. Ouédraogo
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引用次数: 1

Abstract

Information System security is becoming a critical issue today, given the large-scale use of the Internet, the diversity of storage and different means of exchanging information. Solutions developed based on signatures are necessary but ineffective nowadays. The introduction of artificial intelligence has brought new life to the field of network intrusion detection. In this context, through this work, we aim to perform a binary and multi-class classification model using supervised learning algorithms for the prediction of new threats. The proposed approach has been tested on the NSL-KDD dataset. We achieved an accuracy of 80.4% for binary classification and 77.5% for multi-class prediction. These very encouraging prediction rates were obtained with the Support Vector Vachine (SVM) and the Multi-Layer Perceptron (MLP).
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随着互联网的大规模使用、信息存储的多样性和信息交换方式的多样化,信息系统的安全问题日益突出。目前,基于签名的解决方案是必要的,但效率不高。人工智能的引入给网络入侵检测领域带来了新的生机。在这种情况下,通过这项工作,我们的目标是使用监督学习算法来执行二元和多类分类模型,以预测新的威胁。该方法已在NSL-KDD数据集上进行了测试。二元分类的准确率为80.4%,多类预测的准确率为77.5%。这些非常令人鼓舞的预测率是通过支持向量机(SVM)和多层感知器(MLP)获得的。
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