基于特征选择的深度神经网络入侵检测系统

Li-Hua Li, Ramli Ahmad, Weng-Chung Tsai, Alok Kumar Sharma
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引用次数: 7

摘要

网络化的目标是以方便的方式实现“资源共享”和“交流”。然而,在提供更多便利服务的同时,也可能出现更多的安全和隐私问题。为了防止这些问题的发生,我们设计了入侵检测系统(IDS, Intrusion Detection System)来增强网络的安全性并观察异常行为。如果我们使用未选择的特征和不相关的数据,模型的准确性和建立模型所需的训练时间都会受到很大的影响。这就是为什么特征选择是构建入侵检测系统(IDS)的一个重要过程。本文旨在通过在处理网络数据之前选择可行的特征来提高深度神经网络(DNN)的能力。本研究采用了被认为是入侵检测的代表性数据集之一的KDD Cup 99数据集。实验结果表明,与不选择特征的方法相比,选择合适的特征对IDS的改进有一定的影响。本研究证明,DNN对IDS的准确率提高了99.4%,准确率提高了99.7%,召回率提高了97.9%,F1分数提高了98.8。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Feature Selection Based DNN for Intrusion Detection System
The goal of networking has the idea of “resource sharing” and “communication” in a convenient way. However, more convenience services are provided, more problems of security and privacy issues may occur. In order to prevent these problems, an IDS (Intrusion Detection System) is designed to enhance the network security and to observe abnormal behavior. Model accuracy and the training time required to build the model are affected greatly if we use the unselected features and irrelevant data. This is the reason why the selection of features is a significant process in building an Intrusion Detection System (IDS). This paper aims to boost the Deep Neural Network (DNN) capabilities by selecting the feasible features before processing networking data. This research employed the KDD Cup 99 dataset which is considered as one of the representative datasets for intrusion detection. Based on our experimental results, it is concluded that the selection of the proper features has effects on the improvement of IDS compared to the method without feature selection. This research has proved that the improvement of DNN for IDS can reach up to 99.4% for accuracy, 99.7% for precision, 97.9% for recall, and 98.8 for F1 score.
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