EagerNet: Early Predictions of Neural Networks for Computationally Efficient Intrusion Detection

Fares Meghdouri, Maximilian Bachl, T. Zseby
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引用次数: 2

Abstract

Fully Connected Neural Networks (FCNNs) have been the core of most state-of-the-art Machine Learning (ML) applications in recent years and also have been widely used for Intrusion Detection Systems (IDSs). Experimental results from the last years show that generally deeper neural networks with more layers perform better than shallow models. Nonetheless, with the growing number of layers, obtaining fast predictions with less resources has become a difficult task despite the use of special hardware such as GPUs. We propose a new architecture to detect network attacks with minimal resources. The architecture is able to deal with either binary or multiclass classification problems and trades prediction speed for the accuracy of the network. We evaluate our proposal with two different network intrusion detection datasets. Results suggest that it is possible to obtain comparable accuracies to simple FCNNs without evaluating all layers for the majority of samples, thus obtaining early predictions and saving energy and computational efforts.
EagerNet:神经网络对高效入侵检测的早期预测
近年来,全连接神经网络(fcnn)已成为最先进的机器学习(ML)应用的核心,并已广泛用于入侵检测系统(ids)。过去几年的实验结果表明,通常具有更多层的深层神经网络比浅层模型表现得更好。然而,随着层数的增加,尽管使用了gpu等特殊硬件,但用更少的资源获得快速预测已经成为一项艰巨的任务。我们提出了一个新的架构,以最少的资源检测网络攻击。该体系结构能够处理二元或多类分类问题,并以预测速度换取网络的准确性。我们用两个不同的网络入侵检测数据集来评估我们的提议。结果表明,无需评估大多数样本的所有层,就可以获得与简单fcnn相当的精度,从而获得早期预测并节省能源和计算工作量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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