基于持续学习的多类入侵检测系统

Chrysoula Oikonomou, Ilias Iliopoulos, D. Ioannidis, D. Tzovaras
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引用次数: 0

摘要

随着智能设备的普及,网络安全已成为保护系统和数据的关键。为了识别和分类不同的网络威胁,本研究引入了一种基于流的网络入侵检测系统(NIDS),该系统基于CNN骨干网的持续学习。利用LYCOS-IDS2017数据集,该研究探索了几种识别威胁的持续学习技术,包括拒绝服务和SQL注入。与以前的方法不同,本工作将入侵检测视为一个多类分类问题,而不是异常检测。研究结果表明,持续学习模型如何能够以高召回率和准确性识别网络入侵,同时产生很少的假警报。本研究有助于自适应网络入侵防御系统的发展,该系统可以在处理攻击分类的同时进行检测,并且可以在线训练而无需定期离线训练。此外,利用改进版本的数据集,通过展示未经测试的模型的结果,为LYCOS-IDS2017的研究增加了价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Multi-Class Intrusion Detection System Based on Continual Learning
With the proliferation of smart devices, network security has become crucial to protect systems and data. In order to identify and categorise different network threats, this study introduces a flow-based Network Intrusion Detection System (NIDS) based on continual learning with a CNN backbone. Using the LYCOS-IDS2017 dataset, the study explores several continuous learning techniques for identifying threats including denial-of-service and SQL injection. Unlike previous approaches, this work treats intrusion detection as a multi-class classification problem, rather than anomaly detection. The findings show how continuously learning models may identify network intrusions with high recall rates and accuracy while generating few false alarms. This study contributes to the development of an adaptive NIDS that can handle attack classification simultaneously with detection, and that can be trained online without periodic offline training. Additionally, utilising the improved version of the dataset adds value to the research on LYCOS-IDS2017 by presenting results for untested models.
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