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A Hypergraph and Arithmetic Residue-based Probabilistic Neural Network for classification in Intrusion Detection Systems

机译:用于入侵检测系统分类的超图和基于算术残基的概率神经网络

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Over the past few decades, the design of an intelligent Intrusion Detection System (IDS) remains an open challenge to the research community. Continuous efforts by the researchers have resulted in the development of several learning models based on Artificial Neural Network (ANN) to improve the performance of the IDSs. However, there exists a tradeoff with respect to the stability of ANN architecture and the detection rate for less frequent attacks. This paper presents a novel approach based on Helly property of Hypergraph and Arithmetic Residue-based Probabilistic Neural Network (HG AR-PNN) to address the classification problem in IDS. The Helly property of Hypergraph was exploited for the identification of the optimal feature subset and the arithmetic residue of the optimal feature subset was used to train the PNN. The performance of HG AR-PNN was evaluated using KDD CUP 1999 intrusion dataset. Experimental results prove the dominance of HG AR-PNN classifier over the existing classifiers with respect to the stability and improved detection rate for less frequent attacks. (C) 2017 Elsevier Ltd. All rights reserved.
机译:在过去的几十年中,智能入侵检测系统(IDS)的设计仍然是对研究界的开放挑战。研究人员的持续努力导致了基于人工神经网络(ANN)的几种学习模型,以提高IDS的性能。然而,关于ANN架构的稳定性和频繁攻击较少攻击的检测速率存在权衡。本文提出了一种基于超图和基于算术残基的概率神经网络(HG AR-PNN)的Helly属性的新方法,以解决IDS中的分类问题。利用超图的Helly属性用于识别最佳特征子集,并且最佳特征子集的算术残留物用于训练PNN。使用KDD杯入侵数据集评估HG AR-PNN的性能。实验结果证明了HG AR-PNN分类器关于稳定性和改善的频率攻击的检测率的优势。 (c)2017 Elsevier Ltd.保留所有权利。

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