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首页> 外文期刊>Journal of Artificial Intelligence and Soft Computing Research >Applying a Neural Network Ensemble to Intrusion Detection
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Applying a Neural Network Ensemble to Intrusion Detection

机译:将神经网络集成应用于入侵检测

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An intrusion detection system (IDS) is an important feature to employ in order to protect a system against network attacks. An IDS monitors the activity within a network of connected computers as to analyze the activity of intrusive patterns. In the event of an ‘attack’, the system has to respond appropriately. Different machine learning techniques have been applied in the past. These techniques fall either into the clustering or the classification category. In this paper, the classification method is used whereby a neural network ensemble method is employed to classify the different types of attacks. The neural network ensemble method consists of an autoencoder, a deep belief neural network, a deep neural network, and an extreme learning machine. The data used for the investigation is the NSL-KDD data set. In particular, the detection rate and false alarm rate among other measures (confusion matrix, classification accuracy, and AUC) of the implemented neural network ensemble are evaluated.
机译:入侵检测系统(IDS)是为了保护系统免受网络攻击而采用的重要功能。 IDS监视连接的计算机网络内的活动,以分析入侵模式的活动。如果发生“攻击”,系统必须做出适当的响应。过去已经应用了不同的机器学习技术。这些技术属于聚类或分类类别。在本文中,使用分类方法,其中采用神经网络集成方法对不同类型的攻击进行分类。神经网络集成方法由自动编码器,深度置信神经网络,深度神经网络和极限学习机组成。用于调查的数据是NSL-KDD数据集。特别是,评估了已实现的神经网络集成的其他度量(混淆矩阵,分类准确性和AUC)以及检测率和虚警率。

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