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首页> 外文期刊>International Journal of Computational Intelligence and Applications >An Efficient Hybrid Self-Learning Intrusion Detection System Based on Neural Networks
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An Efficient Hybrid Self-Learning Intrusion Detection System Based on Neural Networks

机译:基于神经网络的高效混合自学习入侵检测系统

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摘要

An intrusion detection system (IDS) is an immunizing system that identifies the hostile activities in a network, and alerts the network administrator in case of detecting suspicious behaviors. Signature-based systems are the most common methods for intrusion detection, but however, they are not able to detect new attacks on the network. The main problem of these systems is to keep up to date the database of already containing known attack signatures. Neural networks have a high ability to learn and are generalizable. This study present as follow: A new intrusion detection system that is a hybrid of self-organizing map algorithm (SOM), radial basis function (RBF) and perceptron networks is proposed to solve this problem. For the first time, The Imperialist Competitive?Algorithm is used to calculate the parameters of the Perceptron neural network. The proposed approach uses a hybrid architecture that tries to increase the quality of warnings. Signature-based systems using this method can detect new attacks as a self-learner. The results indicated better performance of the proposed hybrid algorithm compared to earlier methods.
机译:入侵检测系统(IDS)是一种免疫系统,该免疫系统标识网络中的敌意活动,并在检测可疑行为的情况下警告网络管理员。基于签名的系统是入侵检测中最常见的方法,但但是,它们无法检测到网络上的新攻击。这些系统的主要问题是为了跟踪已包含已知攻击签名的数据库。神经网络具有高能力的学习和概括。本研究表明如下:提出了一种新的入侵检测系统,即混合自组织地图算法(SOM),径向基函数(RBF)和Perceptron网络以解决这个问题。帝国主义竞争激烈的竞争性?算法用于计算Perceptron神经网络的参数。所提出的方法使用混合架构,以提高警告质量。使用此方法的签名系统可以检测为自学习者的新攻击。结果表明,与前面的方法相比,所提出的混合算法的性能更好。

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