利用深度学习进行网络异常检测

M. Kourtis, Andreas Oikonomakis, D. Papadopoulos, G. Xilouris, I. Chochliouros
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引用次数: 1

摘要

新型网络安全解决方案往往采用新兴领域的新机制,以应对零日攻击和未知签名威胁。深度学习技术吸引了网络安全领域的兴趣,因为它们提供了针对各种对象和目标进行训练的灵活性,其中包括网络异常检测。传统的网络异常检测方法依赖于预定义的威胁特征模式,而深度学习方法可以结合网络流和数据包载荷的不同属性。本文在PALANTIR项目框架下提出了一种基于深度学习的网络异常检测方法。PALANTIR旨在为中小企业开发端到端的网络安全解决方案,为各种攻击威胁提供虚拟化的安全服务。就目前的研究而言,我们在两个广泛使用的安全数据库上评估了所提出的深度学习方法的准确性,在进行异常检测的同时进行流量监控。所开发的框架在准确性方面显示出有希望的结果,并为进一步在网络安全领域采用深度学习机制奠定了基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Leveraging Deep Learning for Network Anomaly Detection
Novel cybersecurity solutions tend to adopt new mechanisms from emerging fields in order to confront zero-day attacks and unknown signature threats. Deep learning techniques have attracted the interest of the cybersecurity domain, as they offer the flexibility to be trained for various objects and targets, amongst them network anomaly detection. Traditional network anomaly detection methods rely on predefined threats signature pattern, whereas deep learning ones can combine different attributes of network flows and packet payloads. In this paper a deep learning-based method for network anomaly detection is presented in the frame of the PALANTIR project. PALANTIR aims to develop an end-to-end cybersecurity solution for SMEs, providing virtualized security services for various attack threats. Regarding the current study, the proposed deep learning method was evaluated for its accuracy on two widely used security databases, performing anomaly detection, while performing flow monitoring. The developed framework shows promising results in terms of accuracy and sets the steppingstone for further adoption of deep learning mechanisms in the cybersecurity field.
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