利用机器学习技术进行漏洞管理

T. Shivani, Hegde Ramakrishna, Nagraj Nagashree
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引用次数: 0

摘要

本文介绍了机器学习的一些技术和方法。然后强调安全问题、攻击媒介和逻辑漏洞。为了解决这些安全问题和缺点,我们提出了一种处理智能弱点的方法。编程漏洞是IT安全行业的一个重要担忧,因为发现这些漏洞的恶意程序员可能会经常错过使用它们来达到令人反感的目的。Web应用程序将继续呈现给未能利用其缺点的事件,直到时间结束。在本研究中,我们研究了如何使用人工智能方法来提高用于识别和防止攻击的Web应用防火墙(waf)的可见性。我们提供了网络安全漏洞本体(CVO),这是一个用于正式数据描述电路板区域弱点的确定模型,我们使用它来构建网络情报警报(CIA)结构,该结构发送有关故障和安全措施的高级警报。在那里,对CVO进行了全面的评估,就像CIA框架的准确性、执行力和有用性一样。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Vulnerability Management using Machine Learning Techniques
This paper presents some technologies and methods for Machine learning. It then highlights security concerns, attack vectors, and logical vulnerabilities. To address these security concerns and shortcomings, we present an areas way to deal with intelligent weaknesses. Programming vulnerability are an essential worry in the IT security industry, as malicious programmers who find these vulnerabilities can regularly miss use them for revolting purposes. Web applications will continue to be presented to events that fail to capitalize on their drawbacks until the end of time. In this research, we examine how AI methods may be used to improve the visibility of Web Application Firewalls (WAFs) that are structures used to identify and prevent assaults. We provide the Cybersecurity Vulnerability Ontology (CVO), a decided model for formal data depiction of the board region's weakness, and we use it to construct a Cyber Intelligence Alert (CIA) structure that sends out advanced alerts concerning faults and security measures. There thoroughly assessed the CVO just as the exactness, execution, and helpfulness of the CIA framework.
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