机器学习在网络安全领域的前景

James B. Fraley, J. Cannady
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引用次数: 63

摘要

在过去的几年里,机器学习已经从实验室转移到了操作系统的前沿。亚马逊(Amazon)、谷歌(Google)和Facebook每天都在使用机器学习来改善客户体验、提出购买建议,或者通过新的应用程序将人们联系起来,并促进人际关系。机器学习的强大能力也适用于网络安全。网络安全的定位是利用机器学习来改进恶意软件检测、分类事件、识别漏洞并提醒组织注意安全问题。机器学习可用于识别高级目标和威胁,如组织分析、基础设施漏洞和潜在的相互依存漏洞和利用。机器学习可以显著改变网络安全格局。恶意软件本身每小时可以代表多达300万个新样本。传统的恶意软件检测和分析无法跟上新的攻击和变体。新的攻击和复杂的恶意软件已经能够绕过网络和端点检测,以惊人的速度进行网络攻击。必须利用机器学习等新技术来解决日益严重的恶意软件问题。本文描述了如何使用机器学习来检测和突出网络防御分析师的高级恶意软件。本文介绍了我们的初步研究结果和对未来扩展机器学习研究的讨论。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The promise of machine learning in cybersecurity
Over the last few years' machine learning has migrated from the laboratory to the forefront of operational systems. Amazon, Google and Facebook use machine learning every day to improve customer experiences, suggested purchases or connect people socially with new applications and facilitate personal connections. Machine learning's powerful capability is also there for cybersecurity. Cybersecurity is positioned to leverage machine learning to improve malware detection, triage events, recognize breaches and alert organizations to security issues. Machine learning can be used to identify advanced targeting and threats such as organization profiling, infrastructure vulnerabilities and potential interdependent vulnerabilities and exploits. Machine learning can significantly change the cybersecurity landscape. Malware by itself can represent as many as 3 million new samples an hour. Traditional malware detection and malware analysis is unable to pace with new attacks and variants. New attacks and sophisticated malware have been able to bypass network and end-point detection to deliver cyber-attacks at alarming rates. New techniques like machine learning must be leveraged to address the growing malware problem. This paper describes how machine learning can be used to detect and highlight advanced malware for cyber defense analysts. The results of our initial research and a discussion of future research to extend machine learning is presented.
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