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Network anomaly detection with incomplete audit data

机译:使用不完整的审核数据进行网络异常检测

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With the ever increasing deployment and usage of gigabit networks, traditional network anomaly detection based Intrusion Detection Systems (IDS) have not scaled accordingly. Most, if not all IDS assume the availability of complete and clean audit data. We contend that this assumption is not valid. Factors like noise, mobility of the nodes and the large amount of network traffic make it difficult to build a traffic profile of the network that is complete and immaculate for the purpose of anomaly detection. In this paper, we attempt to address these issues by presenting an anomaly detection scheme, called SCAN (Stochastic Clustering Algorithm for Network Anomaly Detection), that has the capability to detect intrusions with high accuracy even with incomplete audit data. To address the threats posed by network-based denial-of-service attacks in high speed networks, SCAN consists of two modules: an anomaly detection module that is at the core of the design and an adaptive packet sampling scheme that intelligently samples packets to aid the anomaly detection module. The noteworthy features of SCAN include: (a) it intelligently samples the incoming network traffic to decrease the amount of audit data being sampled while retaining the intrinsic characteristics of the network traffic itself; (b) it computes the missing elements of the sampled audit data by utilizing an improved expectation-maximization (EM) algorithm-based clustering algorithm; and (c) it improves the speed of convergence of the clustering process by employing Bloom filters and data summaries.
机译:随着千兆网络的部署和使用不断增加,基于传统网络异常检测的入侵检测系统(IDS)尚未相应扩展。大多数(如果不是全部)IDS都假设有完整而干净的审核数据。我们认为该假设无效。诸如噪声,节点的移动性和大量的网络流量之类的因素使得难以建立完整且完整的网络流量概况以用于异常检测。在本文中,我们尝试通过提出一种称为SCAN(用于网络异常检测的随机聚类算法)的异常检测方案来解决这些问题,该方案即使在审计数据不完整的情况下也能够以高精度检测入侵。为了解决高速网络中基于网络的拒绝服务攻击所带来的威胁,SCAN包含两个模块:位于设计核心的异常检测模块和对数据包进行智能采样以帮助解决问题的自适应数据包采样方案异常检测模块。 SCAN值得注意的功能包括:(a)它可以智能地对传入的网络流量进行采样,以减少采样的审计数据量,同时保留网络流量本身的固有特征; (b)利用改进的基于期望最大化(EM)算法的聚类算法计算抽样审计数据的缺失元素; (c)通过使用布隆过滤器和数据摘要,提高了聚类过程的收敛速度。

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