Application attack detection system (AADS): An anomaly based behavior analysis approach

R. Viswanathan, Y. Al-Nashif, S. Hariri
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引用次数: 7

Abstract

Network security, especially application layer security has gained importance with the rapid growth of web-based applications. Anomaly based approaches that profile the network traffic and look for abnormalities are effective against zero-day attacks. The complex nature of the web traffic, availability of multiple applications, privacy concerns and its own limitations make the development of such anomaly-based systems difficult. This paper proposes a framework for application layer anomaly detection. The framework uses a multiple model approach to detect anomalies. The framework encompasses a dedicated training phase to model the specific network traffic and a detection phase that can be deployed in real time. The framework has been applied to HTTP application traffic and multiple models have been developed. The experimental evaluation results of the AADS using multiple attack vectors have achieved a detection rate of almost 100%. In addition, the AADS has a false positive rate of 0.03%.
应用攻击检测系统(AADS):一种基于异常的行为分析方法
网络安全,特别是应用层安全随着基于web的应用程序的快速增长而变得越来越重要。基于异常的方法对网络流量进行分析并查找异常,可以有效地对抗零日攻击。网络流量的复杂性、多个应用程序的可用性、隐私问题及其自身的局限性使得开发这种基于异常的系统变得困难。本文提出了一种应用层异常检测框架。该框架使用多模型方法检测异常。该框架包括一个专门的训练阶段,用于对特定的网络流量进行建模,以及一个可以实时部署的检测阶段。该框架已应用于HTTP应用程序流量,并开发了多个模型。使用多种攻击向量的AADS的实验评估结果达到了接近100%的检测率。此外,AADS的假阳性率为0.03%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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