网络入侵检测的自编码器特征残差:改进性能的单类预训练

IF 4 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Machine learning and knowledge extraction Pub Date : 2023-07-31 DOI:10.3390/make5030046
B. Lewandowski, R. Paffenroth
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引用次数: 0

摘要

新型攻击的激增和不断增长的数据量使得网络入侵检测领域的从业者不断努力跟上这种不断发展的对抗环境。研究人员一直在寻求利用深度学习技术来检测零日攻击,并允许网络入侵检测系统更有效地提醒网络运营商。这项工作中概述的技术使用一类训练过程来塑造自动编码器特征残差,以有效检测网络攻击。与原始输入特征集相比,我们表明自编码器特征残差是一个合适的替代品,并且通常表现至少与原始特征集一样好。这种质量允许自动编码器特征残差,以防止需要大量的特征工程,而不会降低分类性能。此外,与原始特征集相比,在不生成新数据的情况下,使用自编码器特征残差通常可以提高分类器的性能。通过分析自编码器特征残差提供的潜在数据压缩优势,可以得出使用自编码器特征残差的实际副作用。
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Autoencoder Feature Residuals for Network Intrusion Detection: One-Class Pretraining for Improved Performance
The proliferation of novel attacks and growing amounts of data has caused practitioners in the field of network intrusion detection to constantly work towards keeping up with this evolving adversarial landscape. Researchers have been seeking to harness deep learning techniques in efforts to detect zero-day attacks and allow network intrusion detection systems to more efficiently alert network operators. The technique outlined in this work uses a one-class training process to shape autoencoder feature residuals for the effective detection of network attacks. Compared to an original set of input features, we show that autoencoder feature residuals are a suitable replacement, and often perform at least as well as the original feature set. This quality allows autoencoder feature residuals to prevent the need for extensive feature engineering without reducing classification performance. Additionally, it is found that without generating new data compared to an original feature set, using autoencoder feature residuals often improves classifier performance. Practical side effects from using autoencoder feature residuals emerge by analyzing the potential data compression benefits they provide.
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来源期刊
CiteScore
6.30
自引率
0.00%
发文量
0
审稿时长
7 weeks
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