人工智能和大数据驱动的IS安全管理解决方案及其在高等教育机构的应用

Vladislavs Minkevics, Jānis Kampars
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引用次数: 0

摘要

本文介绍了基于大数据的模块化信息系统(IS)安全管理系统(ISMS)的体系结构,并详细阐述了其中的一个模块——人工智能驱动的NetFlow数据分析(NFAI)模块。里加技术大学在生产中使用了ISMS,并可以在其他组织中进行调整。该平台主要基于免费和开源工具,可以防止或最小化恶意软件活动的后果,同时对员工的隐私影响很小。提出的NFAI检测模块通过在10分钟的间隔内从NetFlow数据中提取特征并将其输入几个训练过的分类器来检测恶意软件活动。ISMS并不仅仅依赖于NFAI模块,它使用了一系列模块和算法来提高恶意软件检测的准确性。所提出的IS安全管理系统可用于实时环境,其NFAI检测模块允许在受感染设备开始与僵尸网络(计算机,智能手机或物联网设备等互联网连接设备的逻辑集合,其安全性已被破坏并将控制权交给第三方)指挥和控制中心进行通信时识别受感染设备,以获得新的命令。所提出的NFAI模块已在生产环境中进行了验证,并识别了防病毒软件、防火墙或入侵检测系统未检测到的受感染设备。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Artificial intelligence and big data driven IS security management solution with applications in higher education organizations
This paper presents the architecture of a modular big-data-based information system (IS) security management system (ISMS) and elaborates one of its modules - artificial intelligence driven NetFlow data analysis (NFAI) module. The ISMS is used in production at Riga Technical University and can be adapted for use in other organizations. The proposed platform is based on mostly free and open-source tools and allows to prevent or minimize the consequences of malware's activity with little impact on the employee's privacy. The presented NFAI detection module provides detection of malware activity by extracting features from NetFlow data within a 10-minute interval and feeding it into several trained classifiers. ISMS does not rely solely on NFAI module alone, it uses an ensemble of modules and algorithms to increase the accuracy of the malware detection. The presented IS security management system can be employed in real-time environment and its NFAI detection module allows to identify an infected device as soon as it starts to communicate with the botnet (a logical collection of Internet-connected devices such as computers, smartphones or IoT devices whose security have been breached and control ceded to a third party) command and control centre to obtain new commands. The presented NFAI module has been validated in the production environment and identified infected devices which were not detected by antivirus software nor by firewall or Intrusion Detection System.
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