IDSX-Attention:基于MADE-SDAE和LSTM-Attention混合机制的入侵检测系统

Hanafi Hanafi, A. Pranolo, Yingchi Mao, T. Hariguna, Leonel Hernandez, Nanang F Kurniawan
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引用次数: 2

摘要

入侵检测系统(IDS)是自动监控网络攻击活动的关键。近十年来,利用机器学习技术开发网络攻击自动检测已成为一个重要的研究课题。深度学习是近年来在IDS应用中非常流行的一种机器学习算法。在过去的五年中,采用深度学习方面的复杂层算法来提高IDS检测效率。不幸的是,大多数深度学习模型都会产生大量的假阴性,导致主要的错误检测,从而影响IDS应用程序的性能。本文旨在整合预处理中去除异常值的统计模型、负责降低数据维数的SDAE模型和负责生成攻击分类任务的LSTM-Attention模型。该模型被实现到NSL-KDD数据集中,并使用准确性、F1、召回率和混淆度量指标进行评估。结果表明,所提出的IDSX-Attention优于基准模型SDAE、LSTM、PCA-LSTM和MI -LSTM,平均提高了2%以上。本研究证明了拟议的IDSX-Attention在提高IDS有效性和应对网络威胁检测挑战方面的潜力,特别是作为一种深度学习方法。它强调了集成统计模型、深度学习和降维机制来改进入侵检测的重要性。进一步的研究可以探索其他深度学习算法和数据集的集成,以验证所提出模型的有效性,并提高IDS的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
IDSX-Attention: Intrusion detection system (IDS) based hybrid MADE-SDAE and LSTM-Attention mechanism
An Intrusion Detection System (IDS) is essential for automatically monitoring cyber-attack activity. Adopting machine learning to develop automatic cyber attack detection has become an important research topic in the last decade. Deep learning is a popular machine learning algorithm recently applied in IDS applications. The adoption of complex layer algorithms in the term of deep learning has been applied in the last five years to increase IDS detection effectiveness. Unfortunately, most deep learning models generate a large number of false negatives, leading to dominant mistake detection that can affect the performance of IDS applications. This paper aims to integrate a statistical model to remove outliers in pre-processing, SDAE, responsible for reducing data dimensionality, and LSTM-Attention, responsible for producing attack classification tasks. The model was implemented into the NSL-KDD dataset and evaluated using Accuracy, F1, Recall, and Confusion metrics measures. The results showed that the proposed IDSX-Attention outperformed the baseline model, SDAE, LSTM, PCA-LSTM, and Mutual Information (MI)-LSTM, achieving more than a 2% improvement on average. This study demonstrates the potential of the proposed IDSX-Attention, particularly as a deep learning approach, in enhancing the effectiveness of IDS and addressing the challenges in cyber threat detection. It highlights the importance of integrating statistical models, deep learning, and dimensionality reduction mechanisms to improve IDS detection. Further research can explore the integration of other deep learning algorithms and datasets to validate the proposed model's effectiveness and improve the performance of IDS.
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来源期刊
International Journal of Advances in Intelligent Informatics
International Journal of Advances in Intelligent Informatics Computer Science-Computer Vision and Pattern Recognition
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