Network Attacks Detection by Hierarchical Neural Network

M. Javidi
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引用次数: 1

Abstract

Intrusion detection is an emerging area of research in the computer security and net-works with the growing usage of internet in everyday life. Most intrusion detection systems (IDSs) mostly use a single classifier algorithm to classify the network traffic data as normal behavior or anomalous. However, these single classifier systems fail to provide the best possible attack detection rate with low false alarm rate. In this paper,we propose to use a hybrid intelligent approach using a combination of classifiers in order to make the decision intelligently, so that the overall performance of the resul-tant model is enhanced. The general procedure in this is to follow the supervised or un-supervised data filtering with classifier or cluster first on the whole training dataset and then the output are applied to another classifier to classify the data. In this re- search, we applied Neural Network with Supervised and Unsupervised Learning in order to implement the intrusion detection system. Moreover, in this project, we used the method of Parallelization with real time application of the system processors to detect the systems intrusions.Using this method enhanced the speed of the intrusion detection. In order to train and test the neural network, NSLKDD database was used. Creating some different intrusion detection systems, each of which considered as a single agent, we precisely proceeded with the signature-based intrusion detection of the network.In the proposed design, the attacks have been classified into 4 groups and each group is detected by an Agent equipped with intrusion detection system (IDS).These agents act independently and report the intrusion or non-intrusion in the system; the results achieved by the agents will be studied in the Final Analyst and at last the analyst reports that whether there has been an intrusion in the system or not. Keywords: Intrusion Detection, Multi-layer Perceptron, False Positives, Signature- based intrusion detection, Decision tree, Nave Bayes Classifier
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基于层次神经网络的网络攻击检测
随着互联网在日常生活中的日益普及,入侵检测是计算机安全和网络领域的一个新兴研究领域。大多数入侵检测系统大多使用单一分类器算法将网络流量数据分类为正常行为或异常行为。然而,这些单一分类器系统无法在低虚警率的情况下提供最佳的攻击检测率。在本文中,我们提出了一种混合智能方法,使用分类器的组合来智能地做出决策,从而提高了结果模型的整体性能。一般过程是先对整个训练数据集使用分类器或聚类进行有监督或无监督的数据过滤,然后将输出应用到另一个分类器中对数据进行分类。在本研究中,我们将神经网络与监督学习和无监督学习相结合来实现入侵检测系统。此外,在本项目中,我们采用并行化的方法,实时应用系统处理器来检测系统入侵。该方法提高了入侵检测的速度。为了训练和测试神经网络,使用了NSLKDD数据库。我们创建了一些不同的入侵检测系统,每个系统都被认为是一个单独的代理,我们精确地进行了基于签名的网络入侵检测。在该设计中,攻击被分为4组,每组由配备入侵检测系统(IDS)的Agent进行检测。这些代理独立行动并报告系统中的入侵或非入侵;代理取得的结果将在Final Analyst中进行研究,最后由Analyst报告系统中是否存在入侵。关键词:入侵检测,多层感知器,误报,基于签名的入侵检测,决策树,朴素贝叶斯分类器
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