GeNIS:用于网络入侵检测和分类的模块化数据集

IF 1 Q3 MULTIDISCIPLINARY SCIENCES
Miguel Silva, Daniela Pinto, João Vitorino, José Gonçalves, Eva Maia, Isabel Praça
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引用次数: 0

摘要

开发用于网络攻击检测和分类的人工智能解决方案需要高质量和代表性的数据。然而,针对易受攻击的中小型企业的网络攻击的标记数据集缺乏。为了允许组织根据其用户类型、活动服务和使用的网络协议来改进其入侵检测系统,有必要提供不同类型的良性和恶意流量的可靠捕获。GECAD网络入侵场景(GeNIS)数据集包含多个连续攻击场景和不同类型的现实正常网络活动,记录在空中客车CyberRange平台的高级网络模拟中。对原始网络数据包进行分析,生成标记的网络流,并计算统计特征来表示本地和远程攻击者、正常用户和管理员以及企业计算机网络后台流量的流量模式。GeNIS采用模块化设计,提供包含每个中间攻击步骤超过3700万个数据包的原始数据包捕获下一代(PCAPNG)文件,以便使用不同的流导出器、特征提取和特征选择工具进行深入分析,以及过滤的CSV文件,其中包含以5、10、30和60秒流间隔创建的超过280万个流。这些流经过预处理,提供了一个可靠的基准数据集,其中包含最相关的特征,用于训练、验证和测试健壮的机器学习和深度学习模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
GeNIS: A modular dataset for network intrusion detection and classification
The development of artificial intelligence solutions for cyberattack detection and classification require high-quality and representative data. However, there is a scarcity of labelled datasets focused on the cyberattacks that target vulnerable small and medium-sized enterprises. To allow organizations to improve their intrusion detection systems according to their types of users, their active services, and the network protocols they use, it is necessary to provide reliable captures of different types of benign and malicious traffic. The GECAD Network Intrusion Scenarios (GeNIS) dataset contains multiple sequential attack scenarios and different types of realistic normal network activity, recorded during advanced network simulations on the Airbus CyberRange platform. The raw network packets were analyzed to generate labelled network flows, with the computation of statistical features to represent the traffic patterns of local and remote attackers, normal users and administrators, and background traffic of an enterprise computer network. GeNIS follows a modular design, providing raw packet capture next generation (PCAPNG) files with over 37 million packets of each intermediate attack step to enable an in-depth analysis with different flow exporters, feature extraction, and feature selection tools, as well as filtered CSV files with over 2.8 million flows created with 5, 10, 30, and 60 s flow intervals. The flows were preprocessed to provide a reliable benchmark dataset with the most relevant features for the training, validation, and testing of robust machine learning and deep learning models.
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来源期刊
Data in Brief
Data in Brief MULTIDISCIPLINARY SCIENCES-
CiteScore
3.10
自引率
0.00%
发文量
996
审稿时长
70 days
期刊介绍: Data in Brief provides a way for researchers to easily share and reuse each other''s datasets by publishing data articles that: -Thoroughly describe your data, facilitating reproducibility. -Make your data, which is often buried in supplementary material, easier to find. -Increase traffic towards associated research articles and data, leading to more citations. -Open up doors for new collaborations. Because you never know what data will be useful to someone else, Data in Brief welcomes submissions that describe data from all research areas.
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