基于包序列预测的递归神经网络入侵检测算法比较

Wafaa Anani, J. Samarabandu
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引用次数: 20

摘要

递归神经网络(RNN)在序列学习中表现出显著的效果,特别是在具有门控单元结构的体系结构中,如长短期记忆(LSTM)。近年来,人们提出了几种LSTM结构的排列,主要是为了克服LSTM的计算复杂性。在本文中,我们提出了第一项研究,该研究将对入侵检测数据集上的LSTM架构变体进行实证调查和评估。该研究旨在确定每个LSTM算法所需的学习时间,并衡量入侵预测的准确性。结果表明,每种变体在特定参数下都有改进,然而,在大数据集和短时间训练下,没有一种变体优于标准LSTM。
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Comparison of Recurrent Neural Network Algorithms for Intrusion Detection Based on Predicting Packet Sequences
Recurrent neural networks (RNN) shows a remarkable result in sequence learning, particularly in architectures with gated unit structures such as long short-term memory (LSTM). In recent years, several permutations of LSTM architecture have been proposed mainly to overcome the computational complexity of LSTM. In this paper, we present the first study that will empirically investigate and evaluate LSTM architecture variants specifically on a intrusion detection dataset. The investigation is designed to identify the learning time required for each LSTM algorithm and to measure the intrusion prediction accuracy. The results show that each variant exhibit improvement at specific parameters, yet, with a large dataset and short time training, none outperformed the standard LSTM.
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