Intrusion detection is one of the important mechanisms that provide computer networks security. Due to an increase in attacks and growing dependence upon other fields such as medicine, commerce, and engineering, offering services over a network and maintaining network security have become a significant issue. The purpose of Intrusion Detection Systems (IDS) is to develop models which are able to distinguish regular communications from abnormal ones, and take the necessary actions. Among different methods in this field, Artificial Neural Networks (ANNs) have been widely used. However, ANN-based IDS encountered two main problems: low detection precision and weak detection stability. To overcome these problems, this paper proposes a new approach based on Deep Neural Network ans Support vector machine classifier, which inspired by "divide and conquer" philosophy. The proposed model predicts the attacks with better accuracy for intrusion detection rather similar methods. For our empirical study, we were taking advantage of the KDD99 dataset. Our experimental results suggest that the new approach enhance to 95.4 percent classification accuracy.
翻译:入侵探测是提供计算机网络安全的重要机制之一。由于袭击的增加和对医学、商业和工程等其他领域的日益依赖,通过网络提供服务和维护网络安全已成为一个重要问题。入侵探测系统的目的是开发能够区分正常通信和异常通信的模型,并采取必要的行动。在这方面,人造神经网络(ANNS)被广泛使用,但是,基于ANN的国际数据系统遇到了两个主要问题:探测精确度低和探测稳定性差。为了克服这些问题,本文件提出了以深神经网络支持矢量机分类器为基础的新方法,该新办法受到“divide and Conference”理念的启发。拟议模型以更精确的入侵探测方法预测攻击。关于我们的经验研究,我们利用了KDD99数据集。我们的实验结果表明,新办法提高了95.4%的分类精确度。