Neural network based anomaly detection

C. Callegari, S. Giordano, M. Pagano
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引用次数: 10

Abstract

Detecting anomalous traffic with low false alarm rates is of primary interest in IP networks management. To this aim it is essential to distinguish between the natural variability of traffic due to its bursty nature and attack-related anomalous events. In this paper we investigate the applicability of neural networks for traffic prediction, focusing on the multilayer feedforward architecture and comparing the performance of different back-propagation algorithms. Prediction is carried out for different random aggregates (obtained through reversible sketches, introduced to improve the scalability of the solution) of traffic flows and, after comparing the prediction error with a threshold, a voting procedure is used to decide about the nature of the current data (with the additional possibility of identifying anomalous flows thanks to the features of reversible sketches). The performance analysis, presented in this paper, demonstrates the effectiveness of the proposed method (in terms of low false alarm rates and convergence speed) for an adequate choice of the learning algorithm.
基于神经网络的异常检测
检测低虚警率的异常流量是IP网络管理的主要问题。为此,区分由于突发性质造成的流量的自然变异性和与攻击有关的异常事件是至关重要的。本文研究了神经网络在交通预测中的适用性,重点研究了多层前馈结构,并比较了不同反向传播算法的性能。对交通流的不同随机聚合(通过可逆草图获得,引入以提高解决方案的可扩展性)进行预测,并在将预测误差与阈值进行比较后,使用投票程序来决定当前数据的性质(由于可逆草图的特征,有可能识别异常流)。本文的性能分析表明,在适当选择学习算法的情况下,所提出的方法(在低虚警率和收敛速度方面)是有效的。
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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