基于前馈神经网络的入侵检测与攻击分类

Fariba Haddadi, Sara Khanchi, Mehran Shetabi, V. Derhami
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引用次数: 66

摘要

近几十年来,互联网的快速发展和用户数量的增加使得网络安全变得至关重要。近年来,入侵检测系统一直是网络安全领域的研究热点之一。本文利用两层前馈神经网络解决了一个入侵检测系统。在训练阶段,采用“提前停止”策略克服了神经网络的“过拟合”问题。采用DARPA数据集对系统进行了评估。对从DARPA中选择的连接进行预处理,并将特征范围转换为[- 1,1]。这些修改对最终检测结果影响较大。实验结果表明,与同类案例相比,该系统简单,性能合适,精度高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Intrusion Detection and Attack Classification Using Feed-Forward Neural Network
Fast Internet growth and increase in number of users make network security essential in recent decades. Lately one of the most hot research topics in network security is intrusion detection systems (IDSs) which try to keep security at the highest level. This paper addresses a IDS using a 2-layered feed-forward neural network. In training phase, “early stopping” strategy is used to overcome the “over-fitting” problem in neural networks. The proposed system is evaluated by DARPA dataset. The connections selected from DARPA is preprocessed and feature range is converted into [-1, 1]. These modifications affect final detection results notably. Experimental results show that the system, with simplicity in comparison with similar cases, has suitable performance with high precision.
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