面向公共实体的三阶段机器学习网络安全解决方案

Stanisław Saganowski
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引用次数: 0

摘要

在普遍数字化的时代,确保网络和数据的安全是极其重要的。作为区域网络安全中心倡议的一部分,正在开发一个三阶段机器学习网络安全解决方案,并将于2021年3月部署。该解决方案由预防、监控和管理阶段组成。作为预防措施,我们利用自然语言处理从社交媒体、新闻门户和暗网中提取安全相关信息。采用深度学习架构对网络进行实时监控,检测异常流量。将正则表达式、模式识别和启发式的组合应用于滥用报告,以自动识别通过其他安全解决方案的入侵。从正在进行的系统开发中吸取的经验教训,以及结果、广泛的分析和讨论。此外,网络安全相关的语料库被描述并在本工作中发布。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A three-stage machine learning network security solution for public entities
In the era of universal digitization, ensuring network and data security is extremely important. As a part of the Regional Center for Cybersecurity initiative, a three-stage machine learning network security solution is being developed and will be deployed in March 2021. The solution consists of prevention, monitoring, and curation stages. As prevention, we utilize Natural Language Processing to extract the security-related information from social media, news portals, and darknet. A deep learning architecture is used to monitor the network in real-time and detect any abnormal traffic. A combination of regular expressions, pattern recognition, and heuristics are applied to the abuse reports to automatically identify intrusions that passed other security solutions. The lessons learned from the ongoing development of the system, alongside the results, extensive analysis, and discussion is provided. Additionally, a cybersecurity-related corpus is described and published within this work.
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